Sleep Disorder Prediction

Project Overview

The main objective of this data science project is to analyze various lifestyle and medical variables of individuals, such as age, BMI, physical activity, sleep duration, blood pressure, etc., and use this information to predict the occurrence and type of sleep disorder they may experience. Sleep disorders, like Insomnia and Sleep Apnea, can have significant impacts on an individual's health and overall well-being. By identifying individuals at risk of sleep disorders, appropriate interventions and treatments can be provided to improve their sleep quality and overall health.

About the Dataset:

The dataset used for this project is called the "Sleep Health and Lifestyle Dataset." It consists of 400 rows (individuals) and 13 columns (variables) that cover a wide range of information related to sleep patterns and daily habits. The dataset includes the following key features:

  • Comprehensive Sleep Metrics: This section allows exploring various sleep-related metrics such as sleep duration, quality of sleep, and factors influencing sleep patterns.
  • Lifestyle Factors: The dataset provides insights into lifestyle factors such as physical activity levels, stress levels, and BMI categories, which may have an impact on an individual's sleep health.
  • Cardiovascular Health: The dataset includes measurements of blood pressure and heart rate, which are crucial indicators of an individual's cardiovascular health and may have a correlation with sleep disorders.
  • Sleep Disorder Analysis: The primary focus of this project is to identify the presence or absence of sleep disorders in individuals. The dataset labels individuals with three categories in the "Sleep Disorder" column:

    1. None: Individuals who do not exhibit any specific sleep disorder.
    2. Insomnia: Individuals who experience difficulty falling asleep or staying asleep, leading to inadequate or poor-quality sleep.
    3. Sleep Apnea: Individuals who suffer from pauses in breathing during sleep, resulting in disrupted sleep patterns and potential health risks.

    Data Dictionary

    Column Name Description
    Person_ID Unique ID assigned to each person
    Gender The gender of the person (Male/Female)
    Age Age of the person in years
    Occupation The occupation of the person
    Sleep_duration The duration of sleep of the person in hours
    Quality_of_sleep A subjective rating of the quality of sleep, ranging from 1 to 10
    Physical_activity The level of physical activity of the person (Low/Medium/High)
    Stress Level A subjective rating of the stress level, ranging from 1 to 10
    BMI_category The BMI category of the person (Underweight/Normal/Overweight/Obesity)
    Blood_pressure The blood pressure of the person in mmHg
    Heart_rate The heart rate of the person in beats per minute
    Daily Steps The number of steps taken by the person per day
    Sleep_disorder The presence or absence of a sleep disorder in the person (None, Insomnia, Sleep Apnea)

    Impact

    By undertaking this data science project, we aim to provide valuable insights into the factors influencing sleep disorders and develop a model that can help identify individuals at risk, thus promoting better sleep health and overall well-being.

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