Heuristic Weight Initialization for Diagnosing Heart Diseases Using Feature Ranking

Musulmon Lolaev, Shraddha M. Naik, Anand Paul, Abdellah Chehri
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Abstract

The advent of Artificial Intelligence (AI) has had a broad impact on life to solve various tasks. Building AI models and integrating them with modern technologies is a central challenge for researchers. These technologies include wearables and implants in living beings, and their use is known as human augmentation, using technology to enhance human abilities. Combining human augmentation with artificial intelligence (AI), especially after the recent successes of the latter, is the most significant advancement in their applicability. In the first section, we briefly introduce these modern applications in health care and examples of their use cases. Then, we present a computationally efficient AI-driven method to diagnose heart failure events by leveraging actual heart failure data. The classifier model is designed without conventional models such as gradient descent. Instead, a heuristic is used to discover the optimal parameters of a linear model. An analysis of the proposed model shows that it achieves an accuracy of 84% and an F1 score of 0.72 with only one feature. With five features for diagnosis, the accuracy achieved is 83%, and the F1 score is 0.74. Moreover, the model is flexible, allowing experts to determine which variables are more important than others when implementing diagnostic systems.
基于特征排序的启发式权重初始化诊断心脏病
人工智能(AI)的出现已经对生活产生了广泛的影响,可以解决各种各样的任务。构建人工智能模型并将其与现代技术相结合是研究人员面临的核心挑战。这些技术包括可穿戴设备和植入物,它们的用途被称为人类增强,利用技术来增强人类的能力。将人类增强与人工智能(AI)结合起来,特别是在后者最近取得成功之后,是其适用性方面最重要的进步。在第一部分中,我们将简要介绍医疗保健中的这些现代应用程序及其用例示例。然后,我们提出了一种计算效率高的人工智能驱动方法,通过利用实际心力衰竭数据来诊断心力衰竭事件。该分类器模型的设计不采用梯度下降等传统模型。相反,启发式算法用于发现线性模型的最优参数。对该模型的分析表明,仅使用一个特征,该模型的准确率为84%,F1分数为0.72。采用5个特征进行诊断,准确率达到83%,F1得分为0.74。此外,该模型是灵活的,允许专家在实施诊断系统时确定哪些变量比其他变量更重要。
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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