TY - JOUR
T1 - Training, Validating, and Testing Machine Learning Prediction Models for Endometrial Cancer Recurrence
AU - Gonzalez Bosquet, Jesus
AU - Polio, Andrew
AU - George, Erin
AU - Tarhini, Ahmad A.
AU - Cosgrove, Casey M.
AU - Huang, Marilyn S.
AU - Corr, Bradley
AU - Leiser, Aliza L.
AU - Salhia, Bodour
AU - Darcy, Kathleen
AU - Tarney, Christopher M.
AU - Dood, Rob L.
AU - Dockery, Lauren E.
AU - Edge, Stephen B.
AU - Cavnar, Michael J.
AU - Landrum, Lisa
AU - Rounbehler, Rob J.
AU - Churchman, Michelle
AU - Wagner, Vincent M.
N1 - Publisher Copyright:
© 2025 by American Society of Clinical Oncology.
PY - 2025/5/1
Y1 - 2025/5/1
N2 - PURPOSEEndometrial cancer (EC) is the most common gynecologic cancer in the United States with rising incidence and mortality. Despite optimal treatment, 15%-20% of all patients will recur. To better select patients for adjuvant therapy, it is important to accurately predict patients at risk for recurrence. Our objective was to train, validate, and test models of EC recurrence using lasso regression and other machine learning (ML) and deep learning (DL) analytics in a large, comprehensive data set.METHODSData from patients with EC were downloaded from the Oncology Research Information Exchange Network database and stratified into low risk, The International Federation of Gynecology and Obstetrics (FIGO) grade 1 and 2, stage I (N = 329); high risk, or FIGO grade 3 or stages II, III, IV (N = 324); and nonendometrioid histology (N = 239) groups. Clinical, pathologic, genomic, and genetic data were used for the analysis. Genomic data included microRNA, long noncoding RNA, isoforms, and pseudogene expressions. Genetic variation included single-nucleotide variation (SNV) and copy-number variation (CNV). In the discovery phase, we selected variables informative for recurrence (P <.05), using univariate analyses of variance. Then, we trained, validated, and tested multivariate models using selected variables and lasso regression, MATLAB (ML), and TensorFlow (DL).RESULTSRecurrence clinic models for low-risk, high-risk, and high-risk nonendometrioid histology had AUCs of 56%, 70%, and 65%, respectively. For training, we selected models with AUC >80%: five for the low-risk group, 20 models for the high-risk group, and 20 for the nonendometrioid group. The two best low-risk models included clinical data and CNVs. For the high-risk group, three of the five best-performing models included pseudogene expression. For the nonendometrioid group, pseudogene expression and SNV were overrepresented in the best models.CONCLUSIONPrediction models of EC recurrence built with ML and DL analytics had better performance than models with clinical and pathologic data alone. Prospective validation is required to determine clinical utility.
AB - PURPOSEEndometrial cancer (EC) is the most common gynecologic cancer in the United States with rising incidence and mortality. Despite optimal treatment, 15%-20% of all patients will recur. To better select patients for adjuvant therapy, it is important to accurately predict patients at risk for recurrence. Our objective was to train, validate, and test models of EC recurrence using lasso regression and other machine learning (ML) and deep learning (DL) analytics in a large, comprehensive data set.METHODSData from patients with EC were downloaded from the Oncology Research Information Exchange Network database and stratified into low risk, The International Federation of Gynecology and Obstetrics (FIGO) grade 1 and 2, stage I (N = 329); high risk, or FIGO grade 3 or stages II, III, IV (N = 324); and nonendometrioid histology (N = 239) groups. Clinical, pathologic, genomic, and genetic data were used for the analysis. Genomic data included microRNA, long noncoding RNA, isoforms, and pseudogene expressions. Genetic variation included single-nucleotide variation (SNV) and copy-number variation (CNV). In the discovery phase, we selected variables informative for recurrence (P <.05), using univariate analyses of variance. Then, we trained, validated, and tested multivariate models using selected variables and lasso regression, MATLAB (ML), and TensorFlow (DL).RESULTSRecurrence clinic models for low-risk, high-risk, and high-risk nonendometrioid histology had AUCs of 56%, 70%, and 65%, respectively. For training, we selected models with AUC >80%: five for the low-risk group, 20 models for the high-risk group, and 20 for the nonendometrioid group. The two best low-risk models included clinical data and CNVs. For the high-risk group, three of the five best-performing models included pseudogene expression. For the nonendometrioid group, pseudogene expression and SNV were overrepresented in the best models.CONCLUSIONPrediction models of EC recurrence built with ML and DL analytics had better performance than models with clinical and pathologic data alone. Prospective validation is required to determine clinical utility.
UR - http://www.scopus.com/inward/record.url?scp=105005157131&partnerID=8YFLogxK
U2 - 10.1200/PO-24-00859
DO - 10.1200/PO-24-00859
M3 - Article
C2 - 40324114
AN - SCOPUS:105005157131
SN - 2473-4284
VL - 9
JO - JCO Precision Oncology
JF - JCO Precision Oncology
M1 - e2400859
ER -