netanelhugi / heart-diseases

Classifies the presence of heart disease in the patient using deep learning.

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Heart disease classification

In this project, we built 2 models to classify the presence of heart disease in patients:

  1. Logistic regression.
  2. Neural Network - The same model with more layers.

The model distinguishes between 2 options: 0 – Absence of heart disease. 1 – Presence of heart disease. The data set we worked on contains files with patient details from 4 different hospitals, consisting of 75 features. We used only one data file (of Cleveland), and the 13 following features:

  1. Age: in years.
  2. Sex: 0=female, 1=male.
  3. Chest pain type:
  • Value 1: typical angina.
  • Value 2: atypical angina.
  • Value 3: non-anginal pain.
  • Value 4: asymptomatic.
  1. Resting blood pressure: in mm Hg.
  2. Serum cholesterol: in mg/dl.
  3. Fasting blood sugar > 120 mg/dl: 1 = true, 0 = false.
  4. Resting electrocardiographic results:
  • Value 0: normal.
  • Value 1: having ST-T wave abnormality.
  • Value 2: showing probable or definite left ventricular hypertrophy by Estes' criteria.
  1. Maximum heart rate achieved.
  2. Exercise induced angina: 1 = yes, 0 = no.
  3. ST depression induced by exercise relative to rest.
  4. The slope of the peak exercise ST segment:
  • Value 1: upsloping.
  • Value 2: flat.
  • Value 3: downsloping.
  1. Number of major vessels: 0/1/2/3.
  2. Thal: 3 = normal, 6 = fixed defect, 7 = reversable defect.

(Link to full description: https://archive.ics.uci.edu/ml/datasets/Heart+Disease) The file of Cleveland database contains data of 303 different patients. From this data we used 70% for train data, and the rest to testing our model. The data was divided between test and train randomly.

For model results, refer to "Assignment description.pdf" In both folders.

About

Classifies the presence of heart disease in the patient using deep learning.


Languages

Language:Python 100.0%