Comparative analysis prediction of prostate and testicular cancer mortality using machine learning: accuracy study.

IF 1.3 4区 医学 Q2 MEDICINE, GENERAL & INTERNAL
Sao Paulo Medical Journal Pub Date : 2025-02-24 eCollection Date: 2025-01-01 DOI:10.1590/1516-3180.2024.0080.03072024
Aurélio Gomes de Albuquerque Neto, David Medeiros Nery, João Paulo Araújo Braz, Carla Ferreira do Nascimento, Tiago Almeida de Oliveira, Brígida Gabriele Albuquerque Barra, Leonardo Thiago Duarte Barreto Nobre, Diego Bonfada, Janine Karla França da Silva Braz
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引用次数: 0

Abstract

Background: The mortality rates of prostate and testicular cancer are higher mortality in the northeast region.

Objective: We aimed to compare the efficacy of machine learning libraries in predicting testicular and prostate cancer mortality.

Design and setting: A comparative analysis of the pyMannKendall and Prophet machine-learning algorithms was conducted to develop predictive models using data from DATASUS (TabNet) to Caicó (Brazil) and Rio Grande do Norte (Brazil).

Methods: Data on prostate and testicular cancer mortality in men from 2000 to 2019 were collected. The prediction accuracy of the Prophet algorithm was evaluated using the mean squared error (MSE), the root mean squared error and analyzed using the pyMannKendall, and Prophet libraries.

Results: The research data were made publicly available on GitHub. The machine test confirmed the accuracy of the predictions, with the root MSE (RMSE) values closely matching the observed data for Caicó (RMSE = 2.46) and Rio Grande do Norte (RMSE = 22.85). The Prophet algorithm predicted an increase in prostate cancer mortality by 2030 in Caicó and Rio Grande do Norte. This prediction was corroborated by the pyMannKendall analysis, which indicated a 99% probability of a rising mortality trend in Caicó (P < 0.01; tau = 0.586; intercept = 2.59) and Rio Grande do Norte (P = 2.06; tau = 0.84, and intercept = 119.63). For testicular cancer, no significant mortality trend was identified by Prophet or pyMann-Kendall.

Conclusions: Libraries are reliable tools for predicting mortality, providing support for strategic health planning, and implementing preventive measures to ensure men's health. Addressing the gender gap in DATASUS is essential.

使用机器学习预测前列腺癌和睾丸癌死亡率的比较分析:准确性研究。
背景:东北地区前列腺癌和睾丸癌的死亡率较高。目的:我们旨在比较机器学习文库在预测睾丸癌和前列腺癌死亡率方面的功效。设计和设置:使用DATASUS (TabNet)到Caicó(巴西)和里约热内卢Grande do Norte(巴西)的数据,对pyMannKendall和Prophet机器学习算法进行了比较分析,以开发预测模型。方法:收集2000 - 2019年男性前列腺癌和睾丸癌死亡率数据。使用均方误差(MSE)、均方根误差评估Prophet算法的预测精度,并使用pyMannKendall和Prophet库进行分析。结果:研究数据在GitHub上公开。机器测试证实了预测的准确性,根MSE (RMSE)值与Caicó (RMSE = 2.46)和里约热内卢Grande do Norte (RMSE = 22.85)的观测数据非常匹配。Prophet算法预测,到2030年,Caicó和b里约热内卢Grande do north的前列腺癌死亡率将增加。pyMannKendall分析证实了这一预测,该分析表明Caicó死亡率上升趋势的概率为99% (P < 0.01;Tau = 0.586;intercept = 2.59)和里约热内卢Grande do Norte (P = 2.06;Tau = 0.84,截距= 119.63)。对于睾丸癌,Prophet和pyMann-Kendall没有发现明显的死亡率趋势。结论:图书馆是预测死亡率的可靠工具,为战略健康规划提供支持,并实施预防措施,以确保男性健康。解决DATASUS中的性别差距至关重要。
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来源期刊
Sao Paulo Medical Journal
Sao Paulo Medical Journal 医学-医学:内科
CiteScore
2.20
自引率
7.10%
发文量
210
审稿时长
6-12 weeks
期刊介绍: Published bimonthly by the Associação Paulista de Medicina, the journal accepts articles in the fields of clinical health science (internal medicine, gynecology and obstetrics, mental health, surgery, pediatrics and public health). Articles will be accepted in the form of original articles (clinical trials, cohort, case-control, prevalence, incidence, accuracy and cost-effectiveness studies and systematic reviews with or without meta-analysis), narrative reviews of the literature, case reports, short communications and letters to the editor. Papers with a commercial objective will not be accepted.
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