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一种基于群体智能技术的心血管疾病检测与分类自动诊断模型。

An automatic diagnostic model for the detection and classification of cardiovascular diseases based on swarm intelligence technique.

作者信息

Venkatesh C, V S Prasad B V, Khan Mudassir, Babu J Chinna, Dasu M Venkata

机构信息

Department of Electronics and Communication Engineering, Annamacharya Institute of Technology and Sciences, Rajampet, AP, India.

School of Engineering (CSE), Anurag University, Hyderabad, India.

出版信息

Heliyon. 2024 Feb 5;10(3):e25574. doi: 10.1016/j.heliyon.2024.e25574. eCollection 2024 Feb 15.

Abstract

Globally, cardiovascular diseases (CVDs) rank among the leading causes of mortality. One out of every three deaths is attributed to cardiovascular disease, according to new World Heart Federation research. Cardiovascular disease can be caused by a number of factors, including stress, alcohol, smoking, a poor diet, inactivity, and other medical disorders like high blood pressure or diabetes. In contrast, for the vast majority of heart disorders, early diagnosis of associated ailments results in permanent recovery. Using newly developed data analysis technology, examining a patient's medical record could aid in the early detection of cardiovascular disease. Recent work has employed machine learning algorithms to predict cardiovascular illness on clinical datasets. However, because of their enormous dimension and class imbalance, clinical datasets present serious issues. An inventive model is offered in this work for addressing these problems. An efficient decision support system, also known as an assistive system, is proposed in this paper for the diagnosis and classification of cardiovascular disorders. It makes use of an optimisation technique and a deep learning classifier. The efficacy of traditional techniques for predicting cardiovascular disease using medical data is anticipated to advance with the combination of the two methodologies. Deep learning systems can reduce mortality rates by predicting cardiovascular illness based on clinical data and the patient's severity level. For an adequate sample size of synthesized samples, the optimisation process chooses the right parameters to yield the best prediction from an enhanced classifier. The 99.58% accuracy was obtained by the proposed method. Also, PSNR, sensitivity, specificity, and other metrics were calculated in this work and compared with systems that are currently in use.

摘要

在全球范围内,心血管疾病(CVDs)是主要的死亡原因之一。根据世界心脏联合会的最新研究,每三例死亡中就有一例归因于心血管疾病。心血管疾病可能由多种因素引起,包括压力、酒精、吸烟、不良饮食、缺乏运动以及其他疾病,如高血压或糖尿病。相比之下,对于绝大多数心脏疾病来说,早期诊断相关疾病可实现永久性康复。利用新开发的数据分析技术,检查患者的病历有助于早期发现心血管疾病。最近的工作采用机器学习算法在临床数据集上预测心血管疾病。然而,由于临床数据集规模巨大且存在类不平衡问题,这些数据集带来了严重的挑战。本文提出了一种创新模型来解决这些问题。本文提出了一种高效的决策支持系统,也称为辅助系统,用于心血管疾病的诊断和分类。它利用了一种优化技术和一个深度学习分类器。预计将这两种方法结合起来,传统医学数据预测心血管疾病技术的效果将会得到提升。深度学习系统可以通过基于临床数据和患者严重程度预测心血管疾病来降低死亡率。对于合成样本的足够样本量,优化过程会选择合适的参数,以便从增强的分类器中获得最佳预测。所提出的方法获得了99.58%的准确率。此外,本文还计算了PSNR、灵敏度、特异性等指标,并与目前使用的系统进行了比较。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/039f/10873670/27d44a8a8568/gr1.jpg

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