Modeling and survival exploration of breast carcinoma: A statistical, maximum likelihood estimation, and artificial neural network perspective

Anum Shafiq , Andaç Batur Çolak , Tabassum Naz Sindhu , Showkat Ahmad Lone , Tahani A. Abushal
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引用次数: 0

Abstract

The core objective of this research is to describe the behavior of the distribution using the MLE method to estimate its parameters, as well as to determine the optimal Artificial Neural Network method by comparing it to the maximum likelihood estimation method and applying it to real data for breast cancer patients to determine survival, risk, and other survival study functions of the log-logistic distribution. The parameters were defined in the input layer of the artificial neural network developed for the purpose of survival analysis and reliability function, hazard rate function, probability density function, reserved hazard rate function, Mills ratio, Odd function and CHR values were obtained in the output layer. The findings show that risk function increases with the increase in the time of infection and then decreases for a group of breast cancer patients under study, which corresponds to the theoretical properties of this according to the practical conclusions. The examination of survival analysis reveals that practical conclusions correspond to the theoretical properties of log-logistic distribution. Artificial neural networks have proven to be one of the ideal tools that can be used to predict various vital parameters, especially survival of cancer patients, with their high predictive capabilities.

乳腺癌的建模和生存探索:统计学、最大似然估计和人工神经网络的视角
本研究的核心目标是利用最大似然估计方法来描述分布的行为,并将其与最大似然估计方法进行比较,并将其应用于乳腺癌患者的实际数据,确定log-logistic分布的生存、风险等生存研究函数,从而确定最优的人工神经网络方法。在为生存分析而开发的人工神经网络的输入层定义参数,并在输出层获得可靠性函数、风险率函数、概率密度函数、保留风险率函数、Mills比、Odd函数和CHR值。研究结果表明,在所研究的一组乳腺癌患者中,风险函数随着感染时间的增加而增加,然后降低,这与实际结论的理论性质相对应。对生存分析的检验表明,实际结论符合逻辑-logistic分布的理论性质。人工神经网络已被证明是预测各种重要参数,特别是癌症患者生存的理想工具之一,具有很高的预测能力。
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
Artificial intelligence in the life sciences
Artificial intelligence in the life sciences Pharmacology, Biochemistry, Genetics and Molecular Biology (General), Computer Science Applications, Health Informatics, Drug Discovery, Veterinary Science and Veterinary Medicine (General)
CiteScore
5.00
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0.00%
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15 days
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