Probabilistic hierarchical clustering based identification and segmentation of brain tumors in magnetic resonance imaging.

Biomedizinische Technik. Biomedical engineering Pub Date : 2023-10-25 Print Date: 2024-04-25 DOI:10.1515/bmt-2021-0313
Ankit Vidyarthi
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Abstract

The automatic segmentation of the abnormality region from the head MRI is a challenging task in the medical science domain. The abnormality in the form of the tumor comprises the uncontrolled growth of the cells. The automatic identification of the affected cells using computerized software systems is demanding in the past several years to provide a second opinion to radiologists. In this paper, a new clustering approach is introduced based on the machine learning aspect that clusters the tumor region from the input MRI using disjoint tree generation followed by tree merging. Further, the proposed algorithm is improved by introducing the theory of joint probabilities and nearest neighbors. Later, the proposed algorithm is automated to find the number of clusters required with its nearest neighbors to do semantic segmentation of the tumor cells. The proposed algorithm provides good semantic segmentation results having the DB index-0.11 and Dunn index-13.18 on the SMS dataset. While the experimentation with BRATS 2015 dataset yields Dice complete=80.5 %, Dice core=73.2 %, and Dice enhanced=62.8 %. The comparative analysis of the proposed approach with benchmark models and algorithms proves the model's significance and its applicability to do semantic segmentation of the tumor cells with the average increment in the accuracy of around ±2.5 % with machine learning algorithms.

磁共振成像中基于概率层次聚类的脑肿瘤识别和分割。
从头部MRI中自动分割异常区域在医学领域是一项具有挑战性的任务。肿瘤形式的异常包括细胞的不受控制的生长。在过去的几年里,使用计算机软件系统自动识别受影响的细胞是向放射科医生提供第二种意见的要求。本文介绍了一种基于机器学习的新聚类方法,该方法使用不相交树生成和树合并对输入MRI中的肿瘤区域进行聚类。此外,通过引入联合概率和最近邻理论对所提出的算法进行了改进。随后,所提出的算法被自动找到与最近邻居进行肿瘤细胞语义分割所需的聚类数量。所提出的算法在SMS数据集上提供了具有DB索引-0.11和Dunn索引-13.18的良好语义分割结果。而BRATS 2015数据集的实验得出的骰子完整性=80.5 %, 骰子芯=73.2 %, 骰子增强=62.8 %. 将所提出的方法与基准模型和算法进行比较分析,证明了该模型的重要性及其在肿瘤细胞语义分割中的适用性,平均精度增量约为±2.5 % 使用机器学习算法。
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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