Comparison of Some Prediction Models and their Relevance in the Clinical Research

N. Panda, K. L. Mahanta, Jitendra Kumar Pati, P. Varanasi, Ruchi Bhuyan
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Abstract

In healthcare research, predictive modeling is commonly utilized to forecast risk variables and enhance treatment procedures for improved patient outcomes. Enormous quantities of data are being created as a result of recent advances in research, clinical trials, next-generation genomic sequencing, biomarkers, and transcriptional and translational studies. Understanding how to handle and comprehend scientific data to offer better treatment for patients is critical. Currently, multiple prediction models are being utilized to investigate patient outcomes. However, it is critical to recognize the limitations of these models in the research design and their unique benefits and drawbacks. In this overview, we will look at linear regression, logistic regression, decision trees, and artificial neural network prediction models, as well as their advantages and disadvantages. The two most perilous requirements for building any predictive healthcare model are feature selection and model validation. Typically, feature selection is done by a review of the literature and expert opinion on that subject. Model validation is also an essential component of every prediction model. It characteristically relates to the predictive model's performance and accuracy. It is strongly recommended that all clinical parameters should be thoroughly examined before using any prediction model.
几种预测模型的比较及其在临床研究中的应用
在医疗保健研究中,预测模型通常用于预测风险变量,并加强治疗程序,以改善患者的预后。由于研究、临床试验、下一代基因组测序、生物标志物以及转录和翻译研究的最新进展,正在创造大量数据。了解如何处理和理解科学数据,为患者提供更好的治疗至关重要。目前,多种预测模型正被用于研究患者的预后。然而,在研究设计中认识到这些模型的局限性及其独特的优点和缺点是至关重要的。在这篇综述中,我们将研究线性回归、逻辑回归、决策树和人工神经网络预测模型,以及它们的优缺点。构建任何预测性医疗保健模型的两个最危险的要求是特征选择和模型验证。通常,特征选择是通过对该主题的文献和专家意见进行审查来完成的。模型验证也是每个预测模型的重要组成部分。它的特点与预测模型的性能和准确性有关。强烈建议在使用任何预测模型之前,应彻底检查所有临床参数。
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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