AI-DRIVEN DIAGNOSIS: OBJECT RECOGNITION IN MEDICAL IMAGE ANALYSIS, KPR Institute Engineering and Technology, Autonomous Engineering Institution, Coimbatore, India

Title
AI-DRIVEN DIAGNOSIS: OBJECT RECOGNITION IN MEDICAL IMAGE ANALYSIS

Hybrid Event
AI-DRIVEN DIAGNOSIS: OBJECT RECOGNITION IN MEDICAL IMAGE ANALYSIS
Webinar Dept. Level
DATE
Oct 28, 2023
TIME
07:00 PM to 07:00 PM
DEPARTMENT
BM
TOTAL PARTICIPATES
66
AI-DRIVEN DIAGNOSIS: OBJECT RECOGNITION IN MEDICAL IMAGE ANALYSIS AI-DRIVEN DIAGNOSIS: OBJECT RECOGNITION IN MEDICAL IMAGE ANALYSIS
Summary

Principal Component Analysis (PCA) is a widely used technique in medical image analysis, and it plays a crucial role in various aspects of processing and interpreting medical images. PCA is commonly used to reduce the dimensionality of medical images. This is important because medical images, such as MRI or CT scans, can be high-dimensional and contain a large amount of data. PCA can help in classifying medical images into different categories or identifying disease patterns by reducing the dimensionality and highlighting distinguishing features.

Medical image analysis often involves classifying images into different categories or diagnosing diseases and conditions. Decision theory aids in selecting relevant features from medical images. It helps in determining which image characteristics are most informative for making accurate diagnostic or treatment decisions.

Structural methods in medical image analysis refer to a category of techniques that focus on extracting and analyzing the structural information within medical images. These methods are particularly useful for tasks involving the identification, segmentation, and quantification of anatomical structures or abnormalities in medical images.

  • PCA can be used to reduce the dimensionality of feature vectors extracted from images, making it easier to train machine learning models for disease classification.

  • Decision theory can be applied to set decision thresholds for classification tasks. For example, determining the cutoff value for a diagnostic test based on the extracted features.


***END***


Still wondering where to begin?
Apply Now

21st Century Engineering College in Coimbatore

World is transforming everyday. In the rapidly evolving engineering landscape, we have an Increased responsibility to transform the engineering education from traditional curriculum to meet the 21st century skills like Creativity, Critical Thinking, Collaboration and Communication. Through our unique and strategic approach we enable our students to learn beyond and prepare them for life long success.

21st Century Engineering College