Course Information
- Available
- *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Course Overview
Building heart disease & diabetes detection models using Random Forest, Logistic Regression, SVM, XGBoost, and KNN
Welcome to Detecting Heart Disease & Diabetes with Machine Learning course. This is a comprehensive project based course where you will learn step by step on how to build heart disease and diabetes detection models using Random Forest, XGBoost, logistic regression, and support vector machines. This course is a perfect combination between machine learning and healthcare analytics, making it an ideal opportunity for you to level up your data science and programming skills. In the introduction session, you will learn about machine learning applications in the healthcare field, such as getting to know its use cases, models that will be used, patient data privacy, technical challenges and limitations. Then, in the next section, we are going to learn how heart disease and diabetes detection models work. This section will cover data collection, data preprocessing, splitting the data into training and testing sets, model selection, mode training, and disease detection. Afterward, you will also learn about the main causes of heart disease and diabetes, for example, high blood pressure, high cholesterol, obesity, excessive sugar consumption, and genetics. After you have learnt all necessary knowledge about the disease detection model, we will start the project. Firstly you will be guided step by step on how to set up Google Colab IDE. In addition to that, you will also learn how to find and download clinical dataset from Kaggle. Once everything is ready, we will enter the first project section where you will explore the clinical dataset from multiple angles, not only that, you will also visualize the data and make sure you understand the data pattern. In the second part, you will learn step by step on how to build heart disease and diabetes detection systems using Random Forest, XGBoost, logistic regression, and support vector machines. Meanwhile, in the third part, you will learn to evaluate the model’s accuracy and performance using several methods like k-fold cross validation, precision, and recall methods. Lastly, at the end of the course, we will conduct testing on the disease detection model to make sure it has been fully functioning and the detected result is accurate.
First of all, before getting into the course, we need to ask ourselves this question, why should we build heart disease and diabetes detection models? Well, here is my answer. Machine learning presents an extraordinary opportunity to elevate healthcare standards by enabling early disease detection. By developing precise models for identifying heart disease and diabetes, we can initiate timely interventions, personalise treatment plans, and proactively manage health concerns. This not only enhances patient outcomes but also streamlines healthcare delivery systems, reducing the burden on healthcare providers and curbing healthcare expenses over time. In essence, these models signify a significant leap in leveraging technology to boost healthcare accessibility, efficiency, and affordability. Last but not least, by building these projects, you will gain valuable skills and knowledge that can empower you to make a difference in the world of healthcare and potentially open lots of doors to endless opportunities.
Below are things that you can expect to learn from this course:
Learn about machine learning applications in healthcare and patient data privacy
Learn how heart disease and diabetes detection models work. This section will cover data collection, preprocessing, train test split, feature extraction, model training, and detection
Learn about the main causes of heart disease and diabetes, such as high blood pressure, cholesterol, smoking, excessive sugar consumption, and obesity
Learn how to find and download clinical dataset from Kaggle
Learn how to clean dataset by removing missing values and duplicates
Learn how to find correlation between blood pressure and cholesterol
Learn how to analyse demographics of heart disease patients
Learn how to perform feature importance analysis using Random Forest
Learn how to build heart disease detection model using Random Forest
Learn how to build heart disease detection model using Logistic Regression
Learn how to find correlation between blood glucose and insulin
Learn how to analyse diabetes cases that are caused by obesity
Learn how to build diabetes detection model using Support Vector Machine
Learn how to build diabetes detection model using XGBoost
Learn how to build diabetes detection model using K-Nearest Neighbors
Learn how to evaluate the accuracy and performance of the model using precision, recall, and k-fold cross validation metrics
Course Content
- 21 section(s)
- 23 lecture(s)
- Section 1 Introduction
- Section 2 Tools, IDE, and Datasets
- Section 3 Machine Learning Applications in Healthcare
- Section 4 How Heart Disease & Diabetes Detection Models Work?
- Section 5 Main Cause of Heart Disease & Diabetes
- Section 6 Setting Up Google Colab IDE
- Section 7 Finding & Downloading Clinical Dataset From Kaggle
- Section 8 Uploading Clinical Dataset to Google Colab
- Section 9 Quick Overview of Clinical Dataset
- Section 10 Cleaning Dataset by Removing Missing Values & Duplicates
- Section 11 Finding Correlation Between Blood Pressure & Cholesterol
- Section 12 Analyzing Demographics of Heart Disease Patients
- Section 13 Performing Features Importance Analysis with Random Forest
- Section 14 Building Heart Disease Detection Model with Random Forest
- Section 15 Building Heart Disease Detection Model with Logistic Regression
- Section 16 Finding Correlation Between Blood Glucose & Insulin
- Section 17 Analyzing Diabetes Cases Caused by Obesity
- Section 18 Building Diabetes Detection Model with Support Vector Machine
- Section 19 Building Diabetes Detection Model with XGBoost & KNN
- Section 20 Evaluating Accuracy & Performance of Disease Detection Model
- Section 21 Conclusion & Summary
What You’ll Learn
- Learn how to build heart disease detection model using Random Forest
- Learn how to build heart disease detection model using Logistic Regression
- Learn how to build diabetes detection model using Support Vector Machine
- Learn how to build diabetes detection model using XGBoost
- Learn how to build diabetes detection model using K-Nearest Neighbours
- Learn about machine learning applications in healthcare and patient data privacy
- Learn how disease detection model works. This section covers data collection, preprocessing, train test split, feature extraction, model training, and detection
- Learn how to find correlation between blood pressure and cholesterol
- Learn how to analyze demographics of heart disease patients
- Learn how to perform feature importance analysis using Random Forest
- Learn how to find correlation between blood glucose and insulin
- Learn how to analyze diabetes cases that are caused by obesity
- Learn how to evaluate the accuracy and performance of the model using precision, recall, and k-fold cross validation metrics
- Learn about the main causes of heart disease and diabetes, such as high blood pressure, cholesterol, smoking, excessive sugar consumption, and obesity
- Learn how to clean dataset by removing missing values and duplicates
- Learn how to find and download clinical dataset from Kaggle
Skills covered in this course
Reviews
-
AAbirami R
Good
-
JJorge Guevara
Great instructor and incredible course. It explains quite good all the topics. I just would like to request some more resources to learn and have a deeper understanding about how detection models work. Overall it is an excelent course.
-
EEduardo Jimenez
excelente la parte de implementar los sistemas de AA pero hizo falta enfatizar en la evaluación de resultados de los modelos yu lka implemebntación de un modelo con precisión , accuracy y recall mayores al tocar los datos (de ser posible) para mejorar dichos valores y mejorar el programa. una curva roc tambien hubiera funcionado. Pero en cuestión de aplicación todo perfecto. Me encantó
-
JJaved Ahmed
Two vedios, means 12 minutes used on just introductions