Neutrosophic Clustering: A Solution for Handling Indeterminacy in Medical Image Analysis

Sitikantha Mallik, Suneeta Mohanty, Bhabani Shankar Mishra
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Abstract

: The need for additional innovation in the healthcare industry has become more apparent as the world begins to recover from the ravages of the pandemic. While computational intelligence has quietly become integrated into more and more fields, its applications were not something the average person discussed until recently. Computational Intelligence is becoming more and more applicable in several sectors around the world like health, industrial, business and commercial sectors. A.I.’s ability to provide faster and improved functionality is what healthcare workers at healthcare centers believe will be a significant implication in the strife towards improving healthcare delivery and patient care. One of the major applications of A.I. in healthcare is pattern mapping of medical images which mainly involves image processing. It seeks to extract significant things from the image through clustering. Therefore, choosing a suitable clustering method for a specific data set is a crucial step in the process of image segmentation. Numerous modifications to the clustering algorithm, such as the fuzzy k-mean algorithm, have been presented up to this point. All of the data mining techniques currently in use are capable of handling the uncertainty brought on by numerical deviations or unpredictable phenomena in the natural world. But, present data mining challenges in the real world may include indeterminacy components. In this article, we propose a new clustering approach for the segmentation of dental X-ray images that is based on neutrosophic logic. The authentic dental patients’ dataset from KIDS(Kalinga Institute of Dental Science) Hospital is used to validate the proposed approach. The experimental findings demonstrated the proposed method’s superiority in terms of clustering quality over the existing ones.
中性聚类:医学图像分析中处理不确定性的解决方案
:随着世界开始从大流行病的肆虐中恢复过来,医疗保健行业对更多创新的需求变得更加明显。虽然计算智能已悄然融入越来越多的领域,但其应用直到最近才被普通人所讨论。计算智能正越来越多地应用于全球多个领域,如健康、工业、商业和商务领域。医疗保健中心的医护人员认为,人工智能能够提供更快、更完善的功能,这对改善医疗服务和病人护理具有重要意义。人工智能在医疗保健领域的主要应用之一是医疗图像的模式映射,这主要涉及图像处理。它旨在通过聚类从图像中提取重要信息。因此,为特定数据集选择合适的聚类方法是图像分割过程中至关重要的一步。到目前为止,已经有许多对聚类算法的改进,如模糊 K 均值算法。目前使用的所有数据挖掘技术都能够处理数值偏差或自然界中不可预测的现象所带来的不确定性。但是,目前现实世界中的数据挖掘挑战可能包括不确定性因素。在本文中,我们提出了一种基于中性逻辑的牙科 X 光图像分割聚类新方法。来自 KIDS(卡林加牙科科学研究所)医院的真实牙科患者数据集被用来验证所提出的方法。实验结果表明,所提出的方法在聚类质量方面优于现有方法。
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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来源期刊
International Journal of Computing and Digital Systems
International Journal of Computing and Digital Systems Business, Management and Accounting-Management of Technology and Innovation
CiteScore
1.70
自引率
0.00%
发文量
111
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