Department of Information Technology, College of Computers and Information Technology, Taif University, P.O. Box 11099, Taif, 21944, Saudi Arabia.
Department of Computer Science, College of Computers and Information Technology, Taif University, P. O. Box 11099, Taif, 21944, Saudi Arabia.
BMC Med Inform Decis Mak. 2024 Sep 2;24(1):240. doi: 10.1186/s12911-024-02651-8.
The healthcare industry has been put to test the need to manage enormous amounts of data provided by various sources, which are renowned for providing enormous quantities of heterogeneous information. The data are collected and analyzed with different Data Analytic (DA) and machine learning algorithm approaches. Researchers, scientists, and industrialists must manage or select the best approach associated with DA in healthcare. This scientific study is based on decision analysis between the DA factors and alternatives. The information affects the whole system in a rational manner. This information is very important in healthcare sector for appropriate prediction and analysis. The evaluation discusses its benefits and presents an analytic framework. The Fuzzy Analytic Hierarchy Process (Fuzzy AHP) approach is used to address the weight of the factors. The Fuzzy Techniques for Order Preference by Similarity to Ideal Solution (Fuzzy TOPSIS) address the rank of the data analytic alternatives used in healthcare sector. The models used in the article briefly discuss the challenges of DA and approaches to address those challenges. The assorted factors of DA are capture, cleaning, storage, security, stewardship, reporting, visualization, updating, sharing, and querying. The DA alternatives include descriptive, diagnostic, predictive, prescriptive, discovery, regression, cohort and inferential analyses. The most influential factors of the DA and the most suitable approach for the DA are evaluated. The 'cleaning' factor has the highest weight, and 'updating' is achieved at least by the Fuzzy-AHP approach. The regression approach of data analysis had the highest rank, and the diagnostic analysis had the lowest rank. Decision analyses are necessary for data scientists and medical providers to predict diseases appropriately in the healthcare domain. This analysis also revealed the cost benefits to hospitals.
医疗保健行业一直面临着管理来自各种来源的大量数据的需求,这些来源以提供大量异构信息而闻名。这些数据使用不同的数据分析 (DA) 和机器学习算法方法进行收集和分析。研究人员、科学家和工业家必须管理或选择与医疗保健中的 DA 相关的最佳方法。这项科学研究基于 DA 因素和替代方案之间的决策分析。信息以理性的方式影响整个系统。这些信息在医疗保健领域对于适当的预测和分析非常重要。评估讨论了它的好处并提出了一个分析框架。模糊层次分析法 (Fuzzy AHP) 方法用于解决因素的权重问题。模糊逼近理想解排序方法 (Fuzzy TOPSIS) 用于解决医疗保健领域中使用的数据分析替代方案的排名问题。本文中使用的模型简要讨论了 DA 的挑战和解决这些挑战的方法。DA 的分类因素包括捕获、清理、存储、安全、管理、报告、可视化、更新、共享和查询。DA 的替代方案包括描述性、诊断性、预测性、规定性、发现性、回归、队列和推理分析。评估了 DA 的最具影响力因素和最适合的 DA 方法。“清理”因素的权重最高,“更新”至少通过模糊 AHP 方法实现。数据分析的回归方法排名最高,诊断分析排名最低。数据科学家和医疗服务提供者需要进行决策分析,以便在医疗保健领域适当地预测疾病。该分析还揭示了医院的成本效益。