Identification of Factors Affecting Prostate Cancer Using Machine Learning Methods: A Systematic Review.

Q2 Medicine
Serveh Mohammadi, Behzad Imani, Soheila Saeedi, Mohammad Ali Amirzargar
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引用次数: 0

Abstract

Background: Prostate cancer is identified as the second cause of malignancy worldwide and the fifth cause of death among men. Considering the upward trend in cancer incidence and mortality rate due to this disease, the identification of risk factors can be of great help in prevention and conservative measures. Also, due to the significant growth in artificial intelligence and machine learning methods, many risk factors can be studied by identifying the most commonly used methods.

Methods: The articles reviewed in this study were from 4 main databases: PubMed, Scopus, Web of Science, and IEEE Xplore. This systematic review was based on Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. Searching the databases was conducted from the beginning of 2015 to February 17, 2024 were included. Only the articles investigating factors affecting prostate cancer using machine learning are included in this systematic review. Non-English language studies, studies that did not involve human participants, review studies, meta-analyses, letters to editors, and commentary were excluded.

Results: The findings showed that China had the most research in identifying prostate cancer risk factors with machine learning algorithms. Age, PSA level (prostate-specific antigen), tPSA (total PSA), fPSA (free PSA), and PSAD (PSA density) were identified as the most important risk factors in prostate cancer. R-software and Python were most employed in the data analysis. Random forest, support vector machine, and logistic regression were utilized more than other machine learning methods. Among data sources, MCC-Spain, SEER (surveillance, Epidemiology, and End Results), PLCO (National Cancer Institute's Prostate, Lung, Colorectal, and Ovarian Cancer Screening Trial), and NCBI (National Center for Biotechnology Information) were registries that were used in the studies.

Conclusion: This research can help researchers use machine learning methods with better performance and registered data sources and identify the most influential risk factors for prostate cancer prevention and screening.

使用机器学习方法识别影响前列腺癌的因素:系统综述。
背景:前列腺癌被确定为世界范围内恶性肿瘤的第二大原因和男性死亡的第五大原因。考虑到本病的发病率和死亡率呈上升趋势,识别危险因素对预防和采取保守措施有很大帮助。此外,由于人工智能和机器学习方法的显着增长,可以通过确定最常用的方法来研究许多风险因素。方法:本研究检索的文献来自PubMed、Scopus、Web of Science和IEEE explore 4个主要数据库。本系统评价基于系统评价和荟萃分析(PRISMA)指南的首选报告项目。检索时间为2015年初至2024年2月17日。只有使用机器学习研究前列腺癌影响因素的文章被纳入本系统综述。非英语语言研究、不涉及人类受试者的研究、综述研究、元分析、给编辑的信和评论被排除在外。结果:研究结果显示,中国在用机器学习算法识别前列腺癌危险因素方面的研究最多。年龄、PSA水平(前列腺特异性抗原)、tPSA(总PSA)、fPSA(游离PSA)和PSAD (PSA密度)被确定为前列腺癌最重要的危险因素。数据分析中使用最多的是R-software和Python。随机森林、支持向量机和逻辑回归比其他机器学习方法使用得更多。在数据来源中,MCC-Spain、SEER(监测、流行病学和最终结果)、PLCO(国家癌症研究所前列腺、肺癌、结直肠癌和卵巢癌筛查试验)和NCBI(国家生物技术信息中心)是研究中使用的登记处。结论:本研究可以帮助研究人员使用性能更好的机器学习方法和注册数据源,识别最具影响力的前列腺癌预防和筛查危险因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.80
自引率
0.00%
发文量
779
审稿时长
3 months
期刊介绍: Cancer is a very complex disease. While many aspects of carcinoge-nesis and oncogenesis are known, cancer control and prevention at the community level is however still in its infancy. Much more work needs to be done and many more steps need to be taken before effective strategies are developed. The multidisciplinary approaches and efforts to understand and control cancer in an effective and efficient manner, require highly trained scientists in all branches of the cancer sciences, from cellular and molecular aspects to patient care and palliation. The Asia Pacific Organization for Cancer Prevention (APOCP) and its official publication, the Asia Pacific Journal of Cancer Prevention (APJCP), have served the community of cancer scientists very well and intends to continue to serve in this capacity to the best of its abilities. One of the objectives of the APOCP is to provide all relevant and current scientific information on the whole spectrum of cancer sciences. They aim to do this by providing a forum for communication and propagation of original and innovative research findings that have relevance to understanding the etiology, progression, treatment, and survival of patients, through their journal. The APJCP with its distinguished, diverse, and Asia-wide team of editors, reviewers, and readers, ensure the highest standards of research communication within the cancer sciences community across Asia as well as globally. The APJCP publishes original research results under the following categories: -Epidemiology, detection and screening. -Cellular research and bio-markers. -Identification of bio-targets and agents with novel mechanisms of action. -Optimal clinical use of existing anti-cancer agents, including combination therapies. -Radiation and surgery. -Palliative care. -Patient adherence, quality of life, satisfaction. -Health economic evaluations.
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