Evolution of Breast Cancer Recurrence Risk Prediction: A Systematic Review of Statistical and Machine Learning-Based Models

被引:2
|
作者
El Haji, Hasna [1 ,2 ,3 ]
Souadka, Amine [4 ]
Patel, Bhavik N. [1 ,2 ]
Sbihi, Nada
Ramasamy, Gokul [1 ,2 ]
Patel, Bhavika K. [1 ]
Ghogho, Mounir [3 ,5 ]
Banerjee, Imon [1 ,2 ]
机构
[1] Mayo Clin, Dept Radiol, 6161 E Mayo Blvd, Phoenix, AZ 85054 USA
[2] Arizona State Univ, Sch Comp & Augmented Intelligence, Tempe, AZ USA
[3] Int Univ Rabat, TICLab, Rabat, Morocco
[4] Mohammed V Univ Rabat, Natl Inst Oncol, Dept Surg Oncol, Rabat, Morocco
[5] Univ Leeds, Fac Engn, Leeds, W Yorkshire, England
来源
关键词
DISTANT RECURRENCE; ASSAY; EXPRESSION; NOMOGRAM; FEATURES; SURGERY;
D O I
10.1200/CCI.23.00049
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
PURPOSE Selection of appropriate adjuvant therapy to ultimately reduce the risk of breast cancer (BC) recurrence is a challenge for medical oncologists. Several automated risk prediction models have been developed using retrospective clinical data and have evolved significantly over the years in terms of predictors of recurrence, data usage, and predictive techniques (statistical/machine learning [ML]). METHODS Following PRISMA guidelines, we performed a systematic literature review of the aforementioned statistical and ML models published between January 2008 and December 2022 through searching five digital databases-PubMed, ScienceDirect, Scopus, Cochrane, and Web of Science. The comprehensive search yielded a total of 163 papers and after a screening process focusing on papers that dealt exclusively with statistical/ML methods, only 23 papers were deemed appropriate for further analysis. We benchmarked the studies on the basis of development, evaluation metrics, and validation strategy with an added emphasis on racial diversity of patients included in the studies. RESULTS In total, 30.4% of the included studies use statistical techniques, while 69.6% are ML-based. Among these, traditional ML models (support vector machines, decision tree, logistic regression, and naive Bayes) are the most frequently used (26.1%) along with deep learning (26.1%). Deep learning and ensemble learning provide the most accurate predictions (AUC = 0.94 each). CONCLUSION ML-based prediction models exhibit outstanding performance, yet their practical applicability might be hindered by limited interpretability and reduced generalization. Moreover, predictive models for BC recurrence often focus on limited variables related to tumor, treatment, molecular, and clinical features. Imbalanced classes and the lack of open-source data sets impede model development and validation. Furthermore, existing models predominantly overlook African and Middle Eastern populations, as they are trained and validated mainly on Caucasian and Asian patients.
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页数:14
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