Litcius/Paper detail

An Enhanced Optimization of Machine Learning Model in Prostate Cancer Detection

Haritha Yennapusa, Rakesh Ramakrishnan, Balakumar Muniandi, Ketan Gupta, J. Logeshwaran

202432 citationsDOI

Abstract

the present study goals to optimize the overall performance and accuracy of a device-mastering model for prostate most cancers detection. Prostate most cancers is a malignancy which regularly leaves little to no clue of its presence. Early detection is, therefore, the important thing to a hit remedy. Gadget mastering models are increasingly more being applied in fitness care for prognosis and diagnosis. However, those fashions frequently require good sized quantities of records and well-crafted machines to gain ultimate accuracy. The observe proposed a more desirable Optimization of machine mastering (EOML) method to enhance the accuracy of a prostate cancer detection version. First, a gadget learning model changed into educated the usage of publicly available records from the cancer Genome Atlas. These facts set become preprocessed, and a feature extraction and choice method were executed the usage of a classical ensemble function selection approach. After that, a pass-validation method become used to optimize the version further. Eventually, an ensemble gaining knowledge of approach became adopted to enhance the model’s accuracy and performance further. The ensemble getting to know technique blended the predictions of some of device getting to know models to create a more robust and dependable version.

Topics & Concepts

Computer scienceProstate cancerCancer detectionArtificial intelligenceCancerMachine learningMedicineInternal medicineAI in cancer detectionArtificial Intelligence in Healthcare