Enhancing precision in multiple sclerosis lesion segmentation: A U-net based machine learning approach with data augmentation

Q4 Neuroscience
Oezdemir Cetin , Berkay Canel , Gamze Dogali , Unal Sakoglu
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引用次数: 0

Abstract

Segmentation of Multiple Sclerosis (MS) lesions from Magnetic Resonance Imaging (MRI) data presents a significant challenge due to the necessity for large volumes of training data and a sophisticated training process. Traditional MRI datasets often lack the extensive sample sizes required for effective training, necessitating the exploration of alternative methods for accurate segmentation. This study proposes a robust machine learning algorithm designed to identify MS lesions using both single-modal and multi-modal MRI data. The proposed algorithm employs Convolutional Neural Networks (CNNs) in the form of U-Net architecture, a renowned model for biomedical image segmentation. To address the issue of insufficient training data, data augmentation techniques have been implemented, enhancing the diversity and volume of the training set. The dataset for this study was created from MRI data of 20 subjects. The algorithm's effectiveness was evaluated using the DSC score, a statistical tool that measures the similarity between two samples. The model achieved a DSC score of 0.7960 in the training set and 0.7912 in the test set, demonstrating its effectiveness in performing segmentation of MS from multi-modal MRI data. The predicted locations of MS lesions were compared with the corresponding layers of white matter, gray matter, and cerebrospinal fluid within the brain. This innovative approach aims to enhance the accuracy and efficiency of MS lesion segmentation, contributing to advancements in precision medicine and the overall understanding of MS.
提高多发性硬化症病灶分割的精度:一种基于U-net的数据增强机器学习方法
由于需要大量的训练数据和复杂的训练过程,从磁共振成像(MRI)数据中分割多发性硬化症(MS)病变是一项重大挑战。传统的MRI数据集通常缺乏有效训练所需的广泛样本量,因此需要探索替代方法来进行准确分割。本研究提出了一种鲁棒的机器学习算法,旨在使用单模态和多模态MRI数据识别MS病变。该算法采用U-Net结构形式的卷积神经网络(cnn),这是一种著名的生物医学图像分割模型。为了解决训练数据不足的问题,采用了数据增强技术,增强了训练集的多样性和容量。本研究的数据集是根据20名受试者的MRI数据创建的。该算法的有效性是用DSC评分来评估的,DSC评分是一种衡量两个样本之间相似性的统计工具。该模型在训练集中的DSC得分为0.7960,在测试集中的DSC得分为0.7912,证明了该模型对多模态MRI数据进行MS分割的有效性。将MS病变的预测位置与脑内相应的白质、灰质和脑脊液层进行比较。这种创新的方法旨在提高MS病变分割的准确性和效率,为精准医学的进步和对MS的全面了解做出贡献。
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
Neuroimage. Reports
Neuroimage. Reports Neuroscience (General)
CiteScore
1.90
自引率
0.00%
发文量
0
审稿时长
87 days
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