An Assessment of the Predictive Performance of Current Machine Learning-Based Breast Cancer Risk Prediction Models: Systematic Review

被引:5
|
作者
Gao, Ying [1 ]
Li, Shu [2 ]
Jin, Yujing [1 ]
Zhou, Lengxiao [1 ]
Sun, Shaomei [1 ]
Xu, Xiaoqian [1 ]
Li, Shuqian [1 ]
Yang, Hongxi [3 ]
Zhang, Qing [1 ]
Wang, Yaogang [4 ,5 ]
机构
[1] Tianjin Med Univ Gen Hosp, Hlth Management Ctr, Tianjin, Peoples R China
[2] Tianjin Univ Tradit Chinese Med, Sch Management, Tianjin, Peoples R China
[3] Tianjin Med Univ, Sch Basic Med Sci, Dept Bioinformat, Tianjin, Peoples R China
[4] Tianjin Med Univ, Sch Publ Hlth, Tianjin, Peoples R China
[5] Tianjin Med Univ, Sch Publ Hlth, Qixiangtai Rd 22, Tianjin 300070, Peoples R China
来源
JMIR PUBLIC HEALTH AND SURVEILLANCE | 2022年 / 8卷 / 12期
基金
中国国家自然科学基金;
关键词
breast cancer; machine learning; risk prediction; cancer; oncology; systemic review; review; meta-analysis; cancer research; risk model; BIAS; METAANALYSIS; DENSITY; APPLICABILITY; PROBAST; TOOL;
D O I
10.2196/35750
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Background: Several studies have explored the predictive performance of machine learning-based breast cancer risk prediction models and have shown controversial conclusions. Thus, the performance of the current machine learning-based breast cancer risk prediction models and their benefits and weakness need to be evaluated for the future development of feasible and efficient risk prediction models.Objective: The aim of this review was to assess the performance and the clinical feasibility of the currently available machine learning-based breast cancer risk prediction models.Methods: We searched for papers published until June 9, 2021, on machine learning-based breast cancer risk prediction models in PubMed, Embase, and Web of Science. Studies describing the development or validation models for predicting future breast cancer risk were included. The Prediction Model Risk of Bias Assessment Tool (PROBAST) was used to assess the risk of bias and the clinical applicability of the included studies. The pooled area under the curve (AUC) was calculated using the DerSimonian and Laird random-effects model.Results: A total of 8 studies with 10 data sets were included. Neural network was the most common machine learning method for the development of breast cancer risk prediction models. The pooled AUC of the machine learning-based optimal risk prediction model reported in each study was 0.73 (95% CI 0.66-0.80; approximate 95% prediction interval 0.56-0.96), with a high level of heterogeneity between studies (Q=576.07, I2=98.44%; P<.001). The results of head-to-head comparison of the performance difference between the 2 types of models trained by the same data set showed that machine learning models had a slightly higher advantage than traditional risk factor-based models in predicting future breast cancer risk. The pooled AUC of the neural network-based risk prediction model was higher than that of the nonneural network-based optimal risk prediction model (0.71 vs 0.68, respectively). Subgroup analysis showed that the incorporation of imaging features in risk models resulted in a higher pooled AUC than the nonincorporation of imaging features in risk models (0.73 vs 0.61; Pheterogeneity=.001, respectively). The PROBAST analysis indicated that many machine learning models had high risk of bias and poorly reported calibration analysis.Conclusions: Our review shows that the current machine learning-based breast cancer risk prediction models have some technical pitfalls and that their clinical feasibility and reliability are unsatisfactory.(JMIR Public Health Surveill 2022;8(12):e35750) doi: 10.2196/35750
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Evolution of Breast Cancer Recurrence Risk Prediction: A Systematic Review of Statistical and Machine Learning-Based Models
    El Haji, Hasna
    Souadka, Amine
    Patel, Bhavik N.
    Sbihi, Nada
    Ramasamy, Gokul
    Patel, Bhavika K.
    Ghogho, Mounir
    Banerjee, Imon
    [J]. JCO CLINICAL CANCER INFORMATICS, 2023, 7
  • [2] Evolution of Breast Cancer Recurrence Risk Prediction: A Systematic Review of Statistical and Machine Learning-Based Models
    El Haji, Hasna
    Souadka, Amine
    Patel, Bhavik N.
    Sbihi, Nada
    Ramasamy, Gokul
    Patel, Bhavika K.
    Ghogho, Mounir
    Banerjee, Imon
    [J]. JCO CLINICAL CANCER INFORMATICS, 2023, 7
  • [3] Machine learning-based models for the prediction of breast cancer recurrence risk
    Zuo, Duo
    Yang, Lexin
    Jin, Yu
    Qi, Huan
    Liu, Yahui
    Ren, Li
    [J]. BMC MEDICAL INFORMATICS AND DECISION MAKING, 2023, 23 (01)
  • [4] Machine learning-based models for the prediction of breast cancer recurrence risk
    Duo Zuo
    Lexin Yang
    Yu Jin
    Huan Qi
    Yahui Liu
    Li Ren
    [J]. BMC Medical Informatics and Decision Making, 23
  • [5] Improved Machine Learning-Based Predictive Models for Breast Cancer Diagnosis
    Rasool, Abdur
    Bunterngchit, Chayut
    Tiejian, Luo
    Islam, Md Ruhul
    Qu, Qiang
    Jiang, Qingshan
    [J]. INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2022, 19 (06)
  • [6] Machine Learning-Based Predictive Models for Patients with Venous Thromboembolism: A Systematic Review
    Danilatou, Vasiliki
    Dimopoulos, Dimitrios
    Kostoulas, Theodoros
    Douketis, James
    [J]. THROMBOSIS AND HAEMOSTASIS, 2024,
  • [7] Breast cancer risk prediction using machine learning: a systematic review
    Hussain, Sadam
    Ali, Mansoor
    Naseem, Usman
    Nezhadmoghadam, Fahimeh
    Jatoi, Munsif Ali
    Gulliver, T. Aaron
    Tamez-Pena, Jose Gerardo
    [J]. FRONTIERS IN ONCOLOGY, 2024, 14
  • [8] Machine Learning-Based Prediction Models for Clostridioides difficile Infection: A Systematic Review
    Tariq, Raseen
    Malik, Sheza
    Redij, Renisha
    Arunachalam, Shivaram
    Faubion, Jr William A.
    Khanna, Sahil
    [J]. CLINICAL AND TRANSLATIONAL GASTROENTEROLOGY, 2024, 15 (06)
  • [9] MACHINE LEARNING-BASED PREDICTION MODELS FOR C DIFFICILE INFECTION: A SYSTEMATIC REVIEW
    Tariq, Raseen
    Redij, Renisha
    Arunachalam, Shivaram Poigai
    Faubion, William
    Khanna, Sahil
    [J]. GASTROENTEROLOGY, 2023, 164 (06) : S1176 - S1176
  • [10] Factors influencing clinician and patient interaction with machine learning-based risk prediction models: a systematic review
    Giddings, Rebecca
    Joseph, Anabel
    Callender, Thomas
    Janes, Sam M
    van der Schaar, Mihaela
    Sheringham, Jessica
    Navani, Neal
    [J]. The Lancet Digital Health, 2024, 6 (02):