A Performance Comparison on the Machine Learning Classifiers in Predictive Pathology Staging of Prostate Cancer
Overview
Affiliations
This study objectives to investigate a range of Partin table and several machine learning methods for pathological stage prediction and assess them with respect to their predictive model performance based on Koreans data. The data was used SPCDB and gathered records from 944 patients treated with tertiary hospital. Partin table has low accuracy (65.68%) when applied on SPCDB dataset for comparison on patients with OCD NOCD conditions. SVM (75%) represents a promising alternative to Partin table from which pathology staging can benefit.
Automated Machine Learning Segmentation and Measurement of Urinary Stones on CT Scan.
Babajide R, Lembrikova K, Ziemba J, Ding J, Li Y, Fermin A Urology. 2022; 169:41-46.
PMID: 35908740 PMC: 9936246. DOI: 10.1016/j.urology.2022.07.029.
Hameed B, S Dhavileswarapu A, Zahid Raza S, Karimi H, Khanuja H, Shetty D J Clin Med. 2021; 10(9).
PMID: 33925767 PMC: 8123407. DOI: 10.3390/jcm10091864.
Li Z, Yuan L, Zhang C, Sun J, Wang Z, Wang Y Front Oncol. 2021; 10:576901.
PMID: 33552957 PMC: 7855854. DOI: 10.3389/fonc.2020.576901.
Dr. Answer AI for prostate cancer: Clinical outcome prediction model and service.
Rho M, Park J, Moon H, Lee C, Nam S, Kim D PLoS One. 2020; 15(8):e0236553.
PMID: 32756597 PMC: 7406030. DOI: 10.1371/journal.pone.0236553.
[Research status and trend of artificial intelligence in the diagnosis of urinary diseases].
Qin F, Yuan J Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2020; 37(2):230-235.
PMID: 32329274 PMC: 9927610. DOI: 10.7507/1001-5515.201910055.