Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.12188/22837
Title: Understanding the Role of the Microbiome in Cancer Diagnostics and Therapeutics by Creating and Utilizing ML Models
Authors: Cekikj, Miodrag
Jakimovska Özdemir, Milena
Kalajdzhiski, Slobodan
Özcan, Orhan
U˘gur Sezerman, Osman
Keywords: colorectal carcinogenesis; feature subset selection; machine learning; postsurgical risk; random forest; colorectal cancer; gut microbiota; therapy resistance; microbiome; methodology
Issue Date: 12-Sep-2022
Publisher: MDPI
Journal: Applied Sciences
Abstract: Recent studies have highlighted that gut microbiota can alter colorectal cancer susceptibility and progression due to its impact on colorectal carcinogenesis. This work represents a comprehensive technical approach in modeling and interpreting the drug-resistance mechanisms from clinical data for patients diagnosed with colorectal cancer. To accomplish our aim, we developed a methodology based on evaluating high-performance machine learning models where a Python-based random forest classifier provides the best performance metrics, with an overall accuracy of 91.7%. Our approach identified and interpreted the most significant genera in the cases of resistant groups. Thus far, many studies point out the importance of present genera in the microbiome and intend to treat it separately. The symbiotic bacterial analysis generated different sets of joint feature combinations, providing a combined overview of the model’s predictiveness and uncovering additional data correlations where different genera joint impacts support the therapy-resistant effect. This study points out the different perspectives of treatment since our aggregate analysis gives precise results for the genera that are often found together in a resistant group of patients, meaning that resistance is not due to the presence of one pathogenic genus in the patient microbiome, but rather several bacterial genera that live in symbiosis.
URI: http://hdl.handle.net/20.500.12188/22837
Appears in Collections:Faculty of Computer Science and Engineering: Journal Articles

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