SURVIVAL RATE FOLLOWING THORACIC SURGERY

Main Article Content

Mr.M.Narendra , D.Bhavyasri , G.Raghuram , P.Aditya Patel

Abstract

Tracking health outcomes is essential for enhancing quality initiatives, healthcare management, and consumer education. Thoracic surgery refers to the collection of information from patients who underwent extensive lung resections for primary lung cancer. When utilising machine learning algorithms to predict health outcomes, attribute ranking and selection are essential elements.


Before symptoms occurred, researchers employed a variety of techniques, such as early-stage examinations, to identify the type of cancer. Utilizing attribute ranking and selection, the most pertinent attributes are found, and the redundant and extraneous attributes are eliminated from the dataset.


 


Before symptoms occurred, researchers employed a variety of techniques, such as early-stage examinations, to identify the type of cancer. Utilizing attribute ranking and selection, the most pertinent attributes are found, and the redundant and extraneous attributes are eliminated from the dataset.


 


 

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How to Cite
Mr.M.Narendra , D.Bhavyasri , G.Raghuram , P.Aditya Patel. (2023). SURVIVAL RATE FOLLOWING THORACIC SURGERY. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 11(3), 2200–2204. https://doi.org/10.17762/turcomat.v11i3.13712
Section
Research Articles