Machine learning in prediction of second primary cancer and recurrence in colorectal cancer

© The author(s). Background: Colorectal cancer (CRC) is the third commonly diagnosed cancer worldwide. Recurrence of CRC (Re) and onset of a second primary malignancy (SPM) are important indicators in treating CRC, but it is often difficult to predict the onset of a SPM. Therefore, we used mechanica...

Full description

Saved in:
Bibliographic Details
Main Authors: Wen Chien Ting, Yen Chiao Angel Lu, Wei Chi Ho, Chalong Cheewakriangkrai, Horng Rong Chang, Chia Ling Lin
Format: Journal
Published: 2020
Subjects:
Online Access:https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85079029728&origin=inward
http://cmuir.cmu.ac.th/jspui/handle/6653943832/68535
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Chiang Mai University
id th-cmuir.6653943832-68535
record_format dspace
spelling th-cmuir.6653943832-685352020-04-02T15:29:01Z Machine learning in prediction of second primary cancer and recurrence in colorectal cancer Wen Chien Ting Yen Chiao Angel Lu Wei Chi Ho Chalong Cheewakriangkrai Horng Rong Chang Chia Ling Lin Medicine © The author(s). Background: Colorectal cancer (CRC) is the third commonly diagnosed cancer worldwide. Recurrence of CRC (Re) and onset of a second primary malignancy (SPM) are important indicators in treating CRC, but it is often difficult to predict the onset of a SPM. Therefore, we used mechanical learning to identify risk factors that affect Re and SPM. Patient and Methods: CRC patients with cancer registry database at three medical centers were identified. All patients were classified based on Re or no recurrence (NRe) as well as SPM or no SPM (NSPM). Two classifiers, namely A Library for Support Vector Machines (LIBSVM) and Reduced Error Pruning Tree (REPTree), were applied to analyze the relationship between clinical features and Re and/or SPM category by constructing optimized models. Results: When Re and SPM were evaluated separately, the accuracy of LIBSVM was 0.878 and that of REPTree was 0.622. When Re and SPM were evaluated in combination, the precision of models for SPM+Re, NSPM+Re, SPM+NRe, and NSPM+NRe was 0.878, 0.662, 0.774, and 0.778, respectively. Conclusions: Machine learning can be used to rank factors affecting tumor Re and SPM. In clinical practice, routine checkups are necessary to ensure early detection of new tumors. The success of prediction and early detection may be enhanced in the future by applying “big data” analysis methods such as machine learning. 2020-04-02T15:29:01Z 2020-04-02T15:29:01Z 2020-01-01 Journal 14491907 2-s2.0-85079029728 10.7150/ijms.37134 https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85079029728&origin=inward http://cmuir.cmu.ac.th/jspui/handle/6653943832/68535
institution Chiang Mai University
building Chiang Mai University Library
country Thailand
collection CMU Intellectual Repository
topic Medicine
spellingShingle Medicine
Wen Chien Ting
Yen Chiao Angel Lu
Wei Chi Ho
Chalong Cheewakriangkrai
Horng Rong Chang
Chia Ling Lin
Machine learning in prediction of second primary cancer and recurrence in colorectal cancer
description © The author(s). Background: Colorectal cancer (CRC) is the third commonly diagnosed cancer worldwide. Recurrence of CRC (Re) and onset of a second primary malignancy (SPM) are important indicators in treating CRC, but it is often difficult to predict the onset of a SPM. Therefore, we used mechanical learning to identify risk factors that affect Re and SPM. Patient and Methods: CRC patients with cancer registry database at three medical centers were identified. All patients were classified based on Re or no recurrence (NRe) as well as SPM or no SPM (NSPM). Two classifiers, namely A Library for Support Vector Machines (LIBSVM) and Reduced Error Pruning Tree (REPTree), were applied to analyze the relationship between clinical features and Re and/or SPM category by constructing optimized models. Results: When Re and SPM were evaluated separately, the accuracy of LIBSVM was 0.878 and that of REPTree was 0.622. When Re and SPM were evaluated in combination, the precision of models for SPM+Re, NSPM+Re, SPM+NRe, and NSPM+NRe was 0.878, 0.662, 0.774, and 0.778, respectively. Conclusions: Machine learning can be used to rank factors affecting tumor Re and SPM. In clinical practice, routine checkups are necessary to ensure early detection of new tumors. The success of prediction and early detection may be enhanced in the future by applying “big data” analysis methods such as machine learning.
format Journal
author Wen Chien Ting
Yen Chiao Angel Lu
Wei Chi Ho
Chalong Cheewakriangkrai
Horng Rong Chang
Chia Ling Lin
author_facet Wen Chien Ting
Yen Chiao Angel Lu
Wei Chi Ho
Chalong Cheewakriangkrai
Horng Rong Chang
Chia Ling Lin
author_sort Wen Chien Ting
title Machine learning in prediction of second primary cancer and recurrence in colorectal cancer
title_short Machine learning in prediction of second primary cancer and recurrence in colorectal cancer
title_full Machine learning in prediction of second primary cancer and recurrence in colorectal cancer
title_fullStr Machine learning in prediction of second primary cancer and recurrence in colorectal cancer
title_full_unstemmed Machine learning in prediction of second primary cancer and recurrence in colorectal cancer
title_sort machine learning in prediction of second primary cancer and recurrence in colorectal cancer
publishDate 2020
url https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85079029728&origin=inward
http://cmuir.cmu.ac.th/jspui/handle/6653943832/68535
_version_ 1681426837410938880