Skip to content

Latest commit

 

History

History
78 lines (60 loc) · 4.67 KB

README.md

File metadata and controls

78 lines (60 loc) · 4.67 KB

NoMyocardial 💖

nomyocardial

Say NO to Myocardial Infarction with NoMyocardial

licence forks stars issues pull-requests

Report · Presentation Slides · Source Code

💪🏻 Motivation

Complications associated with acute myocardial infarction (AMI) are time-sensitive and potentially life-threatening. Pre-diagnosis of these complications at the time of a patient’s hospital admission can enable doctors to perform timely preventive measures, which can be beneficial during a patient’s emergency and post-recovery phases.

🎯 Aim

This project aims to provide insights on indicative risk factors for AMI-related complications that hospitals can utilise to enhance their current treatment protocols.

Our solution, NoMyocardial, is designed to assist doctors in the early detection of possible MI-related complications and pave the way for doctors to reduce the further development of these complications, thereby improving patient quality of life even after AMI.

🤖 Predictive Models

  • Classification and Regression Tree (CART): obtain important variables (general risk indicators) for AMI-related complications
  • Logistic Regression: further analyse each variable by their key risk indicators

📈 Dataset

Myocardial infarction complications from UCI Machine Learning Repository

  • Data Set Characteristics: Multivariate
  • Number of Instances:1700
  • Attribute Characteristics: Real
  • Number of Attributes: 124
  • Associated Tasks: Classification
  • Missing Values? Yes

⭐️ Results

Atrial Fibrillation Chronic Heart Failure Relapse of MI
Accuracy 94.0% 90.7% 94.7%
False Positive Rate 1.0% 5.5% 1.5%
False Negative Rate 5.0% 3.8% 3.8%

👩🏻‍💻️ Contributors

Name Profile Pic
Jing Hua
Eugene
Zhi Qi
Hao Fah
Vinayak