Literature DB >> 33861809

Predicting breast cancer 5-year survival using machine learning: A systematic review.

Jiaxin Li1, Zijun Zhou2, Jianyu Dong1, Ying Fu1, Yuan Li1, Ze Luan1, Xin Peng1.   

Abstract

BACKGROUND: Accurately predicting the survival rate of breast cancer patients is a major issue for cancer researchers. Machine learning (ML) has attracted much attention with the hope that it could provide accurate results, but its modeling methods and prediction performance remain controversial. The aim of this systematic review is to identify and critically appraise current studies regarding the application of ML in predicting the 5-year survival rate of breast cancer.
METHODS: In accordance with the PRISMA guidelines, two researchers independently searched the PubMed (including MEDLINE), Embase, and Web of Science Core databases from inception to November 30, 2020. The search terms included breast neoplasms, survival, machine learning, and specific algorithm names. The included studies related to the use of ML to build a breast cancer survival prediction model and model performance that can be measured with the value of said verification results. The excluded studies in which the modeling process were not explained clearly and had incomplete information. The extracted information included literature information, database information, data preparation and modeling process information, model construction and performance evaluation information, and candidate predictor information.
RESULTS: Thirty-one studies that met the inclusion criteria were included, most of which were published after 2013. The most frequently used ML methods were decision trees (19 studies, 61.3%), artificial neural networks (18 studies, 58.1%), support vector machines (16 studies, 51.6%), and ensemble learning (10 studies, 32.3%). The median sample size was 37256 (range 200 to 659820) patients, and the median predictor was 16 (range 3 to 625). The accuracy of 29 studies ranged from 0.510 to 0.971. The sensitivity of 25 studies ranged from 0.037 to 1. The specificity of 24 studies ranged from 0.008 to 0.993. The AUC of 20 studies ranged from 0.500 to 0.972. The precision of 6 studies ranged from 0.549 to 1. All of the models were internally validated, and only one was externally validated.
CONCLUSIONS: Overall, compared with traditional statistical methods, the performance of ML models does not necessarily show any improvement, and this area of research still faces limitations related to a lack of data preprocessing steps, the excessive differences of sample feature selection, and issues related to validation. Further optimization of the performance of the proposed model is also needed in the future, which requires more standardization and subsequent validation.

Entities:  

Year:  2021        PMID: 33861809     DOI: 10.1371/journal.pone.0250370

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  8 in total

1.  Saudi Radiology Personnel's Perceptions of Artificial Intelligence Implementation: A Cross-Sectional Study.

Authors:  Abdulaziz A Qurashi; Rashed K Alanazi; Yasser M Alhazmi; Ahmed S Almohammadi; Walaa M Alsharif; Khalid M Alshamrani
Journal:  J Multidiscip Healthc       Date:  2021-11-23

2.  Methodological conduct of prognostic prediction models developed using machine learning in oncology: a systematic review.

Authors:  Paula Dhiman; Jie Ma; Constanza L Andaur Navarro; Benjamin Speich; Garrett Bullock; Johanna A A Damen; Lotty Hooft; Shona Kirtley; Richard D Riley; Ben Van Calster; Karel G M Moons; Gary S Collins
Journal:  BMC Med Res Methodol       Date:  2022-04-08       Impact factor: 4.615

3.  A machine learning ensemble approach for 5- and 10-year breast cancer invasive disease event classification.

Authors:  Raffaella Massafra; Maria Colomba Comes; Samantha Bove; Vittorio Didonna; Sergio Diotaiuti; Francesco Giotta; Agnese Latorre; Daniele La Forgia; Annalisa Nardone; Domenico Pomarico; Cosmo Maurizio Ressa; Alessandro Rizzo; Pasquale Tamborra; Alfredo Zito; Vito Lorusso; Annarita Fanizzi
Journal:  PLoS One       Date:  2022-09-19       Impact factor: 3.752

4.  Survival prediction in triple negative breast cancer using multiple instance learning of histopathological images.

Authors:  Piumi Sandarenu; Ewan K A Millar; Yang Song; Lois Browne; Julia Beretov; Jodi Lynch; Peter H Graham; Jitendra Jonnagaddala; Nicholas Hawkins; Junzhou Huang; Erik Meijering
Journal:  Sci Rep       Date:  2022-08-25       Impact factor: 4.996

5.  Diagnostic Accuracy of Machine Learning Models on Mammography in Breast Cancer Classification: A Meta-Analysis.

Authors:  Tengku Muhammad Hanis; Md Asiful Islam; Kamarul Imran Musa
Journal:  Diagnostics (Basel)       Date:  2022-07-05

Review 6.  From Immunohistochemistry to New Digital Ecosystems: A State-of-the-Art Biomarker Review for Precision Breast Cancer Medicine.

Authors:  Sean M Hacking; Evgeny Yakirevich; Yihong Wang
Journal:  Cancers (Basel)       Date:  2022-07-17       Impact factor: 6.575

7.  Deep learning techniques for cancer classification using microarray gene expression data.

Authors:  Surbhi Gupta; Manoj K Gupta; Mohammad Shabaz; Ashutosh Sharma
Journal:  Front Physiol       Date:  2022-09-30       Impact factor: 4.755

8.  Evolution of research trends in artificial intelligence for breast cancer diagnosis and prognosis over the past two decades: A bibliometric analysis.

Authors:  Asif Hassan Syed; Tabrej Khan
Journal:  Front Oncol       Date:  2022-09-23       Impact factor: 5.738

  8 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.