shestakova_maria_lab_6 is ready
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shestakova_maria_lab_6/README.md
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shestakova_maria_lab_6/README.md
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### Задание:
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Использовать нейронную сеть MLPClassifier для данных из файла для задачи: предсказать, является качество сна на основе некоторых других признаков.
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### Технологии:
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Библиотека Scikit-learn, библиотека pandas
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### Что делает лабораторная:
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Лабораторная работа предсказывает качество сна, используя следующие признаки: уровень стресса, возраст, пол, уровень физической активности и категория индекса массы тела.
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### Как запустить:
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Лабораторная работа запускается в файле `shestakova_maria_lab_6.py` через Run: появляется вывод в консоли
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### Вывод:
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Консоль:
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![результат в консоли](res.png)
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Точность - показатель общей точности модели, который указывает на долю правильно классифицированных образцов в тестовой выборке. В данном случае, точность модели составляет примерно 97.33%, что является очень хорошим результатом
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Матрица ошибок показывает количество верно и неверно классифицированных образцов для каждого класса. В данном случае, матрица имеет размерность 6x6, где каждая строка представляет истинный класс, а каждый столбец представляет предсказанный класc. Значения в матрице указывают количество образцов, которые были классифицированы в соответствующих ячейках.
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Из матрицы ошибок можно определить общее количество ошибок, сложив значения, которые находятся вне главной диагонали матрицы. Таким образом, получилось 2 ошибки
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Также выводится отчет о классификации, который содержит информацию о точности, полноте, F1-мере и поддержке для каждого класса
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shestakova_maria_lab_6/res.png
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shestakova_maria_lab_6/res.png
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shestakova_maria_lab_6/shestakova_maria_lab_7.py
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shestakova_maria_lab_6/shestakova_maria_lab_7.py
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import pandas as pd
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from sklearn.preprocessing import LabelEncoder
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from sklearn.neural_network import MLPClassifier
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from sklearn.model_selection import train_test_split
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from sklearn.preprocessing import StandardScaler
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from sklearn.metrics import confusion_matrix
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from sklearn.metrics import classification_report
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# Загрузка данных из файла
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data = pd.read_csv('sleep.csv')
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# Удаление ненужных столбцов
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data = data.drop(['Person ID', 'Occupation', 'Blood Pressure', 'Heart Rate', 'Daily Steps', 'Sleep Disorder'], axis=1)
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# Преобразование категориальных признаков 'Gender' и 'BMI Category' в числовые значения
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label_encoder = LabelEncoder()
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data['Gender'] = label_encoder.fit_transform(data['Gender'])
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data['BMI Category'] = label_encoder.fit_transform(data['BMI Category'])
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# Выделение признаков и целевой переменной
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X = data.drop('Quality of Sleep', axis=1)
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y = data['Quality of Sleep']
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# Разделение данных на обучающую и тестовую выборки
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X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)
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# Масштабирование признаков
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scaler = StandardScaler()
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X_train_scaled = scaler.fit_transform(X_train)
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X_test_scaled = scaler.transform(X_test)
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# Создание и обучение модели
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model = MLPClassifier(hidden_layer_sizes=(100, 100), max_iter=1000, random_state=42)
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model.fit(X_train_scaled, y_train)
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# Оценка точности модели на тестовой выборке
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accuracy = model.score(X_test_scaled, y_test)
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print(f'Accuracy: {accuracy}')
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# Вывод матрицы ошибок
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y_pred = model.predict(X_test_scaled)
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cm = confusion_matrix(y_test, y_pred)
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print("Confusion Matrix:")
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print(cm)
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# Вывод отчета о классификации
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y_pred = model.predict(X_test_scaled)
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classification_rep = classification_report(y_test, y_pred)
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print("Classification Report:")
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print(classification_rep)
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shestakova_maria_lab_6/sleep.csv
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shestakova_maria_lab_6/sleep.csv
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Person ID,Gender,Age,Occupation,Sleep Duration,Quality of Sleep,Physical Activity Level,Stress Level,BMI Category,Blood Pressure,Heart Rate,Daily Steps,Sleep Disorder
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1,Male,27,Software Engineer,6.1,6,42,6,Overweight,126/83,77,4200,None
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2,Male,28,Doctor,6.2,6,60,8,Normal,125/80,75,10000,None
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3,Male,28,Doctor,6.2,6,60,8,Normal,125/80,75,10000,None
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4,Male,28,Sales Representative,5.9,4,30,8,Obese,140/90,85,3000,Sleep Apnea
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5,Male,28,Sales Representative,5.9,4,30,8,Obese,140/90,85,3000,Sleep Apnea
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6,Male,28,Software Engineer,5.9,4,30,8,Obese,140/90,85,3000,Insomnia
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7,Male,29,Teacher,6.3,6,40,7,Obese,140/90,82,3500,Insomnia
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8,Male,29,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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9,Male,29,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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10,Male,29,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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11,Male,29,Doctor,6.1,6,30,8,Normal,120/80,70,8000,None
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12,Male,29,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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13,Male,29,Doctor,6.1,6,30,8,Normal,120/80,70,8000,None
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14,Male,29,Doctor,6,6,30,8,Normal,120/80,70,8000,None
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15,Male,29,Doctor,6,6,30,8,Normal,120/80,70,8000,None
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16,Male,29,Doctor,6,6,30,8,Normal,120/80,70,8000,None
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17,Female,29,Nurse,6.5,5,40,7,Normal Weight,132/87,80,4000,Sleep Apnea
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18,Male,29,Doctor,6,6,30,8,Normal,120/80,70,8000,Sleep Apnea
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19,Female,29,Nurse,6.5,5,40,7,Normal Weight,132/87,80,4000,Insomnia
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20,Male,30,Doctor,7.6,7,75,6,Normal,120/80,70,8000,None
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21,Male,30,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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22,Male,30,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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23,Male,30,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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24,Male,30,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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25,Male,30,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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26,Male,30,Doctor,7.9,7,75,6,Normal,120/80,70,8000,None
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27,Male,30,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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28,Male,30,Doctor,7.9,7,75,6,Normal,120/80,70,8000,None
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29,Male,30,Doctor,7.9,7,75,6,Normal,120/80,70,8000,None
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30,Male,30,Doctor,7.9,7,75,6,Normal,120/80,70,8000,None
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31,Female,30,Nurse,6.4,5,35,7,Normal Weight,130/86,78,4100,Sleep Apnea
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32,Female,30,Nurse,6.4,5,35,7,Normal Weight,130/86,78,4100,Insomnia
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33,Female,31,Nurse,7.9,8,75,4,Normal Weight,117/76,69,6800,None
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34,Male,31,Doctor,6.1,6,30,8,Normal,125/80,72,5000,None
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35,Male,31,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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36,Male,31,Doctor,6.1,6,30,8,Normal,125/80,72,5000,None
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37,Male,31,Doctor,6.1,6,30,8,Normal,125/80,72,5000,None
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38,Male,31,Doctor,7.6,7,75,6,Normal,120/80,70,8000,None
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39,Male,31,Doctor,7.6,7,75,6,Normal,120/80,70,8000,None
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40,Male,31,Doctor,7.6,7,75,6,Normal,120/80,70,8000,None
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41,Male,31,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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42,Male,31,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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43,Male,31,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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44,Male,31,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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45,Male,31,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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46,Male,31,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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47,Male,31,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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48,Male,31,Doctor,7.8,7,75,6,Normal,120/80,70,8000,None
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49,Male,31,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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50,Male,31,Doctor,7.7,7,75,6,Normal,120/80,70,8000,Sleep Apnea
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51,Male,32,Engineer,7.5,8,45,3,Normal,120/80,70,8000,None
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52,Male,32,Engineer,7.5,8,45,3,Normal,120/80,70,8000,None
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53,Male,32,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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54,Male,32,Doctor,7.6,7,75,6,Normal,120/80,70,8000,None
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55,Male,32,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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56,Male,32,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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57,Male,32,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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58,Male,32,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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59,Male,32,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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60,Male,32,Doctor,7.7,7,75,6,Normal,120/80,70,8000,None
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61,Male,32,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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62,Male,32,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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63,Male,32,Doctor,6.2,6,30,8,Normal,125/80,72,5000,None
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64,Male,32,Doctor,6.2,6,30,8,Normal,125/80,72,5000,None
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65,Male,32,Doctor,6.2,6,30,8,Normal,125/80,72,5000,None
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66,Male,32,Doctor,6.2,6,30,8,Normal,125/80,72,5000,None
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67,Male,32,Accountant,7.2,8,50,6,Normal Weight,118/76,68,7000,None
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68,Male,33,Doctor,6,6,30,8,Normal,125/80,72,5000,Insomnia
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69,Female,33,Scientist,6.2,6,50,6,Overweight,128/85,76,5500,None
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70,Female,33,Scientist,6.2,6,50,6,Overweight,128/85,76,5500,None
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71,Male,33,Doctor,6.1,6,30,8,Normal,125/80,72,5000,None
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72,Male,33,Doctor,6.1,6,30,8,Normal,125/80,72,5000,None
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73,Male,33,Doctor,6.1,6,30,8,Normal,125/80,72,5000,None
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74,Male,33,Doctor,6.1,6,30,8,Normal,125/80,72,5000,None
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75,Male,33,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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76,Male,33,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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77,Male,33,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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78,Male,33,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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79,Male,33,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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80,Male,33,Doctor,6,6,30,8,Normal,125/80,72,5000,None
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81,Female,34,Scientist,5.8,4,32,8,Overweight,131/86,81,5200,Sleep Apnea
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82,Female,34,Scientist,5.8,4,32,8,Overweight,131/86,81,5200,Sleep Apnea
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83,Male,35,Teacher,6.7,7,40,5,Overweight,128/84,70,5600,None
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84,Male,35,Teacher,6.7,7,40,5,Overweight,128/84,70,5600,None
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85,Male,35,Software Engineer,7.5,8,60,5,Normal Weight,120/80,70,8000,None
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86,Female,35,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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87,Male,35,Engineer,7.2,8,60,4,Normal,125/80,65,5000,None
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88,Male,35,Engineer,7.2,8,60,4,Normal,125/80,65,5000,None
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89,Male,35,Engineer,7.3,8,60,4,Normal,125/80,65,5000,None
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90,Male,35,Engineer,7.3,8,60,4,Normal,125/80,65,5000,None
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91,Male,35,Engineer,7.3,8,60,4,Normal,125/80,65,5000,None
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92,Male,35,Engineer,7.3,8,60,4,Normal,125/80,65,5000,None
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93,Male,35,Software Engineer,7.5,8,60,5,Normal Weight,120/80,70,8000,None
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94,Male,35,Lawyer,7.4,7,60,5,Obese,135/88,84,3300,Sleep Apnea
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95,Female,36,Accountant,7.2,8,60,4,Normal,115/75,68,7000,Insomnia
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96,Female,36,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
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97,Female,36,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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98,Female,36,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
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99,Female,36,Teacher,7.1,8,60,4,Normal,115/75,68,7000,None
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100,Female,36,Teacher,7.1,8,60,4,Normal,115/75,68,7000,None
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101,Female,36,Teacher,7.2,8,60,4,Normal,115/75,68,7000,None
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102,Female,36,Teacher,7.2,8,60,4,Normal,115/75,68,7000,None
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103,Female,36,Teacher,7.2,8,60,4,Normal,115/75,68,7000,None
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104,Male,36,Teacher,6.6,5,35,7,Overweight,129/84,74,4800,Sleep Apnea
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105,Female,36,Teacher,7.2,8,60,4,Normal,115/75,68,7000,Sleep Apnea
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106,Male,36,Teacher,6.6,5,35,7,Overweight,129/84,74,4800,Insomnia
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107,Female,37,Nurse,6.1,6,42,6,Overweight,126/83,77,4200,None
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108,Male,37,Engineer,7.8,8,70,4,Normal Weight,120/80,68,7000,None
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109,Male,37,Engineer,7.8,8,70,4,Normal Weight,120/80,68,7000,None
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110,Male,37,Lawyer,7.4,8,60,5,Normal,130/85,68,8000,None
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111,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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112,Male,37,Lawyer,7.4,8,60,5,Normal,130/85,68,8000,None
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113,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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114,Male,37,Lawyer,7.4,8,60,5,Normal,130/85,68,8000,None
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115,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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116,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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117,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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118,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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119,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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120,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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121,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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122,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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123,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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124,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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125,Female,37,Accountant,7.2,8,60,4,Normal,115/75,68,7000,None
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126,Female,37,Nurse,7.5,8,60,4,Normal Weight,120/80,70,8000,None
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127,Male,38,Lawyer,7.3,8,60,5,Normal,130/85,68,8000,None
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128,Female,38,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
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|
129,Male,38,Lawyer,7.3,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
130,Male,38,Lawyer,7.3,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
131,Female,38,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
|
||||||
|
132,Male,38,Lawyer,7.3,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
133,Male,38,Lawyer,7.3,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
134,Female,38,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
|
||||||
|
135,Male,38,Lawyer,7.3,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
136,Male,38,Lawyer,7.3,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
137,Female,38,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
|
||||||
|
138,Male,38,Lawyer,7.1,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
139,Female,38,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
|
||||||
|
140,Male,38,Lawyer,7.1,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
141,Female,38,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
|
||||||
|
142,Male,38,Lawyer,7.1,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
143,Female,38,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
|
||||||
|
144,Female,38,Accountant,7.1,8,60,4,Normal,115/75,68,7000,None
|
||||||
|
145,Male,38,Lawyer,7.1,8,60,5,Normal,130/85,68,8000,Sleep Apnea
|
||||||
|
146,Female,38,Lawyer,7.4,7,60,5,Obese,135/88,84,3300,Sleep Apnea
|
||||||
|
147,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,Insomnia
|
||||||
|
148,Male,39,Engineer,6.5,5,40,7,Overweight,132/87,80,4000,Insomnia
|
||||||
|
149,Female,39,Lawyer,6.9,7,50,6,Normal Weight,128/85,75,5500,None
|
||||||
|
150,Female,39,Accountant,8,9,80,3,Normal Weight,115/78,67,7500,None
|
||||||
|
151,Female,39,Accountant,8,9,80,3,Normal Weight,115/78,67,7500,None
|
||||||
|
152,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
153,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
154,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
155,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
156,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
157,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
158,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
159,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
160,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
161,Male,39,Lawyer,7.2,8,60,5,Normal,130/85,68,8000,None
|
||||||
|
162,Female,40,Accountant,7.2,8,55,6,Normal Weight,119/77,73,7300,None
|
||||||
|
163,Female,40,Accountant,7.2,8,55,6,Normal Weight,119/77,73,7300,None
|
||||||
|
164,Male,40,Lawyer,7.9,8,90,5,Normal,130/85,68,8000,None
|
||||||
|
165,Male,40,Lawyer,7.9,8,90,5,Normal,130/85,68,8000,None
|
||||||
|
166,Male,41,Lawyer,7.6,8,90,5,Normal,130/85,70,8000,Insomnia
|
||||||
|
167,Male,41,Engineer,7.3,8,70,6,Normal Weight,121/79,72,6200,None
|
||||||
|
168,Male,41,Lawyer,7.1,7,55,6,Overweight,125/82,72,6000,None
|
||||||
|
169,Male,41,Lawyer,7.1,7,55,6,Overweight,125/82,72,6000,None
|
||||||
|
170,Male,41,Lawyer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
171,Male,41,Lawyer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
172,Male,41,Lawyer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
173,Male,41,Lawyer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
174,Male,41,Lawyer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
175,Male,41,Lawyer,7.6,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
176,Male,41,Lawyer,7.6,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
177,Male,41,Lawyer,7.6,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
178,Male,42,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
179,Male,42,Lawyer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
180,Male,42,Lawyer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
181,Male,42,Lawyer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
182,Male,42,Lawyer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
183,Male,42,Lawyer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
184,Male,42,Lawyer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
185,Female,42,Teacher,6.8,6,45,7,Overweight,130/85,78,5000,Sleep Apnea
|
||||||
|
186,Female,42,Teacher,6.8,6,45,7,Overweight,130/85,78,5000,Sleep Apnea
|
||||||
|
187,Female,43,Teacher,6.7,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
188,Male,43,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
189,Female,43,Teacher,6.7,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
190,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
191,Female,43,Teacher,6.7,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
192,Male,43,Salesperson,6.4,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
193,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
194,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
195,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
196,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
197,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
198,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
199,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
200,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
201,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
202,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,Insomnia
|
||||||
|
203,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,Insomnia
|
||||||
|
204,Male,43,Engineer,6.9,6,47,7,Normal Weight,117/76,69,6800,None
|
||||||
|
205,Male,43,Engineer,7.6,8,75,4,Overweight,122/80,68,6800,None
|
||||||
|
206,Male,43,Engineer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
207,Male,43,Engineer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
208,Male,43,Engineer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
209,Male,43,Engineer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
210,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
211,Male,43,Engineer,7.7,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
212,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
213,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
214,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
215,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
216,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
217,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
218,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,None
|
||||||
|
219,Male,43,Engineer,7.8,8,90,5,Normal,130/85,70,8000,Sleep Apnea
|
||||||
|
220,Male,43,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,Sleep Apnea
|
||||||
|
221,Female,44,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
222,Male,44,Salesperson,6.4,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
223,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
224,Male,44,Salesperson,6.4,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
225,Female,44,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
226,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
227,Female,44,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
228,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
229,Female,44,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
230,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
231,Female,44,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
232,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
233,Female,44,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
234,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
235,Female,44,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
236,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
237,Male,44,Salesperson,6.4,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
238,Female,44,Teacher,6.5,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
239,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
240,Male,44,Salesperson,6.4,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
241,Female,44,Teacher,6.5,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
242,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
243,Male,44,Salesperson,6.4,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
244,Female,44,Teacher,6.5,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
245,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
246,Female,44,Teacher,6.5,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
247,Male,44,Salesperson,6.3,6,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
248,Male,44,Engineer,6.8,7,45,7,Overweight,130/85,78,5000,Insomnia
|
||||||
|
249,Male,44,Salesperson,6.4,6,45,7,Overweight,130/85,72,6000,None
|
||||||
|
250,Male,44,Salesperson,6.5,6,45,7,Overweight,130/85,72,6000,None
|
||||||
|
251,Female,45,Teacher,6.8,7,30,6,Overweight,135/90,65,6000,Insomnia
|
||||||
|
252,Female,45,Teacher,6.8,7,30,6,Overweight,135/90,65,6000,Insomnia
|
||||||
|
253,Female,45,Teacher,6.5,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
254,Female,45,Teacher,6.5,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
255,Female,45,Teacher,6.5,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
256,Female,45,Teacher,6.5,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
257,Female,45,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
258,Female,45,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
259,Female,45,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
260,Female,45,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
261,Female,45,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,Insomnia
|
||||||
|
262,Female,45,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,None
|
||||||
|
263,Female,45,Teacher,6.6,7,45,4,Overweight,135/90,65,6000,None
|
||||||
|
264,Female,45,Manager,6.9,7,55,5,Overweight,125/82,75,5500,None
|
||||||
|
265,Male,48,Doctor,7.3,7,65,5,Obese,142/92,83,3500,Insomnia
|
||||||
|
266,Female,48,Nurse,5.9,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
267,Male,48,Doctor,7.3,7,65,5,Obese,142/92,83,3500,Insomnia
|
||||||
|
268,Female,49,Nurse,6.2,6,90,8,Overweight,140/95,75,10000,None
|
||||||
|
269,Female,49,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
270,Female,49,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
271,Female,49,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
272,Female,49,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
273,Female,49,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
274,Female,49,Nurse,6.2,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
275,Female,49,Nurse,6.2,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
276,Female,49,Nurse,6.2,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
277,Male,49,Doctor,8.1,9,85,3,Obese,139/91,86,3700,Sleep Apnea
|
||||||
|
278,Male,49,Doctor,8.1,9,85,3,Obese,139/91,86,3700,Sleep Apnea
|
||||||
|
279,Female,50,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Insomnia
|
||||||
|
280,Female,50,Engineer,8.3,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
281,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,None
|
||||||
|
282,Female,50,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
283,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
284,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
285,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
286,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
287,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
288,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
289,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
290,Female,50,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
291,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
292,Female,50,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
293,Female,50,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
294,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
295,Female,50,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
296,Female,50,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
297,Female,50,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
298,Female,50,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
299,Female,51,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
300,Female,51,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
301,Female,51,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
302,Female,51,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
303,Female,51,Nurse,7.1,7,55,6,Normal Weight,125/82,72,6000,None
|
||||||
|
304,Female,51,Nurse,6,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
305,Female,51,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
306,Female,51,Nurse,6.1,6,90,8,Overweight,140/95,75,10000,Sleep Apnea
|
||||||
|
307,Female,52,Accountant,6.5,7,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
308,Female,52,Accountant,6.5,7,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
309,Female,52,Accountant,6.6,7,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
310,Female,52,Accountant,6.6,7,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
311,Female,52,Accountant,6.6,7,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
312,Female,52,Accountant,6.6,7,45,7,Overweight,130/85,72,6000,Insomnia
|
||||||
|
313,Female,52,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
314,Female,52,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
315,Female,52,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
316,Female,53,Engineer,8.3,9,30,3,Normal,125/80,65,5000,Insomnia
|
||||||
|
317,Female,53,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
318,Female,53,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
319,Female,53,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
320,Female,53,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
321,Female,53,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
322,Female,53,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
323,Female,53,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
324,Female,53,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
325,Female,53,Engineer,8.3,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
326,Female,53,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
327,Female,53,Engineer,8.3,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
328,Female,53,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
329,Female,53,Engineer,8.3,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
330,Female,53,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
331,Female,53,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
332,Female,53,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
333,Female,54,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
334,Female,54,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
335,Female,54,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
336,Female,54,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
337,Female,54,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
338,Female,54,Engineer,8.4,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
339,Female,54,Engineer,8.5,9,30,3,Normal,125/80,65,5000,None
|
||||||
|
340,Female,55,Nurse,8.1,9,75,4,Overweight,140/95,72,5000,Sleep Apnea
|
||||||
|
341,Female,55,Nurse,8.1,9,75,4,Overweight,140/95,72,5000,Sleep Apnea
|
||||||
|
342,Female,56,Doctor,8.2,9,90,3,Normal Weight,118/75,65,10000,None
|
||||||
|
343,Female,56,Doctor,8.2,9,90,3,Normal Weight,118/75,65,10000,None
|
||||||
|
344,Female,57,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,None
|
||||||
|
345,Female,57,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
346,Female,57,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
347,Female,57,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
348,Female,57,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
349,Female,57,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
350,Female,57,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
351,Female,57,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
352,Female,57,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
353,Female,58,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
354,Female,58,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
355,Female,58,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
356,Female,58,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
357,Female,58,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
358,Female,58,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
359,Female,59,Nurse,8,9,75,3,Overweight,140/95,68,7000,None
|
||||||
|
360,Female,59,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,None
|
||||||
|
361,Female,59,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
362,Female,59,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
363,Female,59,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
364,Female,59,Nurse,8.2,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
365,Female,59,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
366,Female,59,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
367,Female,59,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
368,Female,59,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
369,Female,59,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
370,Female,59,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
371,Female,59,Nurse,8,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
372,Female,59,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
373,Female,59,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
||||||
|
374,Female,59,Nurse,8.1,9,75,3,Overweight,140/95,68,7000,Sleep Apnea
|
|
Loading…
Reference in New Issue
Block a user