疾病和医疗保健信息学的可解释数据分析

C. Leung, Daryl L. X. Fung, Daniel Mai, Qi Wen, Jason Tran, Joglas Souza
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引用次数: 13

摘要

随着技术的进步,从各种丰富的数据源中快速生成和收集了大量有价值的数据。这些有价值的数据包括医疗保健和疾病数据,例如2019年冠状病毒病(COVID-19)等疾病患者的隐私保护统计数据。分析这些数据对社会有益。例如,对医疗保健和疾病数据的数据分析通常会发现有关疾病的有用信息和知识。可解释人工智能(XAI)进一步提高了发现知识的可解释性。因此,可解释的数据分析有助于人们更好地了解这种疾病,这可能会激励他们参与预防、检测、控制和对抗这种疾病。在本文中,我们提出了一个可解释的疾病和医疗保健信息学数据分析系统。我们的系统由两个关键部分组成。预测器组件分析和挖掘历史疾病和医疗保健数据,以便对未来数据进行预测。尽管已经产生了大量的疾病和医疗保健数据,但由于隐私问题,可用数据的数量可能会有所不同。所以,预测者用不同的方法进行预测。它采用数据充足的随机森林和数据有限的基于神经网络的少镜头学习(FSL)。解释器组件提供一般的模型推理和对特定预测的有意义的解释。作为一个数据库工程应用,我们通过将其应用于实际的COVID-19数据来评估我们的系统。评估结果显示了我们的系统在疾病和医疗保健信息学的可解释数据分析中的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable Data Analytics for Disease and Healthcare Informatics
With advancements in technology, huge volumes of valuable data have been generated and collected at a rapid velocity from a wide variety of rich data sources. Examples of these valuable data include healthcare and disease data such as privacy-preserving statistics on patients who suffered from diseases like the coronavirus disease 2019 (COVID-19). Analyzing these data can be for social good. For instance, data analytics on the healthcare and disease data often leads to the discovery of useful information and knowledge about the disease. Explainable artificial intelligence (XAI) further enhances the interpretability of the discovered knowledge. Consequently, the explainable data analytics helps people to get a better understanding of the disease, which may inspire them to take part in preventing, detecting, controlling and combating the disease. In this paper, we present an explainable data analytics system for disease and healthcare informatics. Our system consists of two key components. The predictor component analyzes and mines historical disease and healthcare data for making predictions on future data. Although huge volumes of disease and healthcare data have been generated, volumes of available data may vary partially due to privacy concerns. So, the predictor makes predictions with different methods. It uses random forest With sufficient data and neural network-based few-shot learning (FSL) with limited data. The explainer component provides the general model reasoning and a meaningful explanation for specific predictions. As a database engineering application, we evaluate our system by applying it to real-life COVID-19 data. Evaluation results show the practicality of our system in explainable data analytics for disease and healthcare informatics.
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