确定和预测癌症相关症状群的多阶段研究方案:应用混合方法设计和机器学习算法

Mojtaba Miladinia, Kourosh Zarea, Mahin Gheibizadeh, Mina Jahangiri, Hossein Karimpourian, Darioush Rokhafroz
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引用次数: 0

摘要

近年来,症状管理的集群方法越来越受到关注。症状集群(SC)方法面临的两大挑战是识别和预测这些集群。这项多阶段方案的首要目标是识别晚期癌症患者的 SC,次要目标是开发机器学习算法,以预测第一阶段识别出的 SC。2-MIXIP 研究包括两个主要阶段:第一阶段是识别 SC,第二阶段的重点是开发针对已识别 SC 的预测算法。SC 的识别采用平行混合方法设计(定量和定性)。定量和定性方法同时进行,并且同等重要。数据收集和分析在整合之前是独立进行的。定量分析采用描述性分析方法。定性分析采用内容分析法。然后,对这两部分确定的 SC 进行整合,以确定最终的聚类,并将其用于第二阶段。在第二阶段,我们采用基于树的机器学习方法,利用关键的人口和临床患者特征创建 SCs 预测算法。2-MIXIP 的研究结果有助于更有效地管理癌症患者的症状,并通过 SCs 预测加强临床决策。此外,这项研究的结果还能为旨在控制症状的临床试验提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multiphase study protocol of identifying, and predicting cancer-related symptom clusters: applying a mixed-method design and machine learning algorithms
In recent years, there has been increasing attention on the cluster approach to symptom management. Two significant challenges in the symptom cluster (SC) approach are identifying and predicting these clusters. This multiphase protocol aims to identify SCs in patients with advanced cancer as the primary objective, with the secondary objective of developing machine learning algorithms to predict SCs identified in the first phase.The 2-MIXIP study consists of two main phases. The first phase involves identifying SCs, and the second phase focuses on developing predictive algorithms for the identified SCs. The identification of SCs involves a parallel mixed-method design (quantitative and qualitative). Quantitative and qualitative methods are conducted simultaneously and given equal importance. The data are collected and analyzed independently before being integrated. The quantitative part is conducted using a descriptive-analytical method. The qualitative analysis is conducted using a content analysis approach. Then, the identified SCs from both parts are integrated to determine the final clusters and use them in the second phase. In the second phase, we employ a tree-based machine learning method to create predictive algorithms for SCs using key demographic and clinical patient characteristics.The findings of the 2-MIXIP study can help manage cancer patients' symptoms more effectively and enhance clinical decision-making by using SCs prediction. Furthermore, the results of this study can provide guidance for clinical trials aimed at managing symptoms.
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