Radiomic and Genomic Machine Learning Method Performance for Prostate Cancer Diagnosis: Systematic Literature Review

被引:36
作者
Castaldo, Rossana [1 ]
Cavaliere, Carlo [1 ]
Soricelli, Andrea [1 ]
Salvatore, Marco [1 ]
Pecchia, Leandro [2 ]
Franzese, Monica [1 ]
机构
[1] IRCCS SDN, 113 Via E Gianturco, I-80143 Naples, Italy
[2] Univ Warwick, Coventry, W Midlands, England
关键词
prostate cancer; machine learning; systematic review; meta-analysis; diagnosis; imaging; radiomics; genomics; clinical; biomarkers; MULTIPARAMETRIC MRI; DRE URINE; BIOMARKERS; STRATIFICATION; RADIOGENOMICS; METAANALYSIS; VALIDATION; EXPRESSION; GUIDELINES; SIGNATURE;
D O I
10.2196/22394
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Machine learning algorithms have been drawing attention at the joining of pathology and radiology in prostate cancer research. However, due to their algorithmic learning complexity and the variability of their architecture, there is an ongoing need to analyze their performance. Objective: This study assesses the source of heterogeneity and the performance of machine learning applied to radiomic, genomic, and clinical biomarkers for the diagnosis of prostate cancer. One research focus of this study was on clearly identifying problems and issues related to the implementation of machine learning in clinical studies. Methods: Following the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) protocol, 816 titles were identified from the PubMed, Scopus, and OvidSP databases. Studies that used machine learning to detect prostate cancer and provided performance measures were included in our analysis. The quality of the eligible studies was assessed using the QUADAS-2 (quality assessment of diagnostic accuracy studies-version 2) tool. The hierarchical multivariate model was applied to the pooled data in a meta-analysis. To investigate the heterogeneity among studies, I-2 statistics were performed along with visual evaluation of coupled forest plots. Due to the internal heterogeneity among machine learning algorithms, subgroup analysis was carried out to investigate the diagnostic capability of machine learning systems in clinical practice. Results: In the final analysis, 37 studies were included, of which 29 entered the meta-analysis pooling. The analysis of machine learning methods to detect prostate cancer reveals the limited usage of the methods and the lack of standards that hinder the implementation of machine learning in clinical applications. Conclusions: The performance of machine learning for diagnosis of prostate cancer was considered satisfactory for several studies investigating the multiparametric magnetic resonance imaging and urine biomarkers; however, given the limitations indicated in our study, further studies are warranted to extend the potential use of machine learning to clinical settings. Recommendations on the use of machine learning techniques were also provided to help researchers to design robust studies to facilitate evidence generation from the use of radiomic and genomic biomarkers.
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页数:21
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