Predicting Response to Treatment and Survival in Advanced Ovarian Cancer Using Machine Learning and Radiomics: A Systematic Review
- PMID: 39941708
- PMCID: PMC11815807
- DOI: 10.3390/cancers17030336
Predicting Response to Treatment and Survival in Advanced Ovarian Cancer Using Machine Learning and Radiomics: A Systematic Review
Abstract
Background and Objective: Machine learning and radiomics (ML/RM) are gaining interest in ovarian cancer (OC) but only a few studies have used these methods to predict treatment response. The objective of this study was to review the literature on the applications of ML/RM in OC assessments, specifically focusing on studies describing algorithms to predict treatment response and survival. Methods: This is a systematic review of the published literature from January 1985 to December 2023 on the use of ML/RM in OC An extensive search of electronic library databases was conducted. Two independent reviewers screened the articles initially by title then by full text. Quality was assessed using the MINORS criteria. p-values were generated using the Pearson's Chi-squared (x2) test to compare the performances of ML/RM models with traditional statistics. Results: Of the 5576 screened articles, 225 studies were included. Between 2021 and 2023, 49 studies were published, highlighting the rapidly growing interest in ML/RM. Median-quality scores using the MINORS scale were similar between studies published between 1985-2021 and 2021-2023 (both 8). Neural Networks (22.6%) and LASSO (15.3%) were the most common ML/RM algorithms in OC. Among these studies, 13 focused specifically on prediction of treatment response using radiomics. A total of 5113 patients were analyzed. The most common algorithms were Random Forest (4/13) followed by Neural Networks (3/13) and Support Vectors (3/13). Radiomic analysis was used to predict response to neoadjuvant chemotherapy in seven studies, with a median AUC of 0.77 (range 0.72-0.93), while the median AUC was 0.82 (range 0.77-0.89) in the six studies assessing the prediction of optimal or complete cytoreduction. Median model accuracy reported in 7/13 studies was 73% (range 66-98%). Additionally, four studies investigated the use of ML/RM for survival prediction for OC. The XGBoost model had 80.9% accuracy in predicting 5-year survival compared to linear regression, which achieved 79% accuracy. The Random Forest model has 93.7% accuracy in predicting 12-month progression-free survival, compared to 82% for linear regression. Conclusions: In conclusion, we found that the use of ML/RM algorithms is becoming a more frequent method to predict responses to treatment of OC. These models should be validated in a prospective multicenter trial prior to integration into clinical use.
Keywords: machine learning; ovarian cancer; radiomics; treatment prediction.
Conflict of interest statement
The authors declare no conflicts of interest.
Figures



Similar articles
-
Evaluating the use of machine learning in endometrial cancer: a systematic review.Int J Gynecol Cancer. 2023 Sep 4;33(9):1383-1393. doi: 10.1136/ijgc-2023-004622. Int J Gynecol Cancer. 2023. PMID: 37666535
-
Develop a radiomics-based machine learning model to predict the stone-free rate post-percutaneous nephrolithotomy.Urolithiasis. 2024 Apr 13;52(1):64. doi: 10.1007/s00240-024-01562-7. Urolithiasis. 2024. PMID: 38613668
-
Integration of longitudinal load-bearing tissue MRI radiomics and neural network to predict knee osteoarthritis incidence.J Orthop Translat. 2025 Mar 15;51:187-197. doi: 10.1016/j.jot.2025.01.007. eCollection 2025 Mar. J Orthop Translat. 2025. PMID: 40144553 Free PMC article.
-
Incorporating SULF1 polymorphisms in a pretreatment CT-based radiomic model for predicting platinum resistance in ovarian cancer treatment.Biomed Pharmacother. 2021 Jan;133:111013. doi: 10.1016/j.biopha.2020.111013. Epub 2020 Nov 20. Biomed Pharmacother. 2021. PMID: 33227705
-
Machine learning based radiomics approach for outcome prediction of meningioma - a systematic review.F1000Res. 2025 Mar 25;14:330. doi: 10.12688/f1000research.162306.1. eCollection 2025. F1000Res. 2025. PMID: 40206662 Free PMC article.
Cited by
-
Prediction of Early Diagnosis in Ovarian Cancer Patients Using Machine Learning Approaches with Boruta and Advanced Feature Selection.Life (Basel). 2025 Apr 3;15(4):594. doi: 10.3390/life15040594. Life (Basel). 2025. PMID: 40283147 Free PMC article.
References
-
- Penny S.M. Ovarian Cancer: An Overview. Radiol. Technol. 2020;91:561–575. - PubMed
Publication types
LinkOut - more resources
Full Text Sources