MRISeqClassifier: A Deep Learning Toolkit for Precise MRI Sequence Classification.

Jinqian Pan, Qi Chen, Chengkun Sun, Renjie Liang, Jiang Bian, Jie Xu
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Abstract

Magnetic Resonance Imaging (MRI) is a crucial diagnostic tool in medicine, widely used to detect and assess various health conditions. Different MRI sequences, such as T1-weighted, T2-weighted, and FLAIR, serve distinct roles by highlighting different tissue characteristics and contrasts. However, distinguishing them based solely on the description file is currently impossible due to confusing or incorrect annotations. Additionally, there is a notable lack of effective tools to differentiate these sequences. In response, we developed a deep learning-based toolkit tailored for small, unrefined MRI datasets. This toolkit enables precise sequence classification and delivers performance comparable to systems trained on large, meticulously curated datasets. Utilizing lightweight model architectures and incorporating a voting ensemble method, the toolkit enhances accuracy and stability. It achieves a 99% accuracy rate using only 10% of the data typically required in other research. The code is available at https://github.com/JinqianPan/MRISeqClassifier.

MRISeqClassifier:一个用于精确MRI序列分类的深度学习工具包。
磁共振成像(MRI)是一种重要的医学诊断工具,广泛用于检测和评估各种健康状况。不同的MRI序列,如t1加权、t2加权和FLAIR,通过突出不同的组织特征和对比而发挥不同的作用。然而,由于混淆或不正确的注释,仅根据描述文件区分它们目前是不可能的。此外,明显缺乏有效的工具来区分这些序列。作为回应,我们开发了一个基于深度学习的工具包,专门针对小型、未精炼的MRI数据集。该工具包能够实现精确的序列分类,并提供与在大型精心策划的数据集上训练的系统相当的性能。该工具包利用轻量级模型体系结构并结合投票集成方法,提高了准确性和稳定性。它只使用其他研究中通常需要的10%的数据就能达到99%的准确率。代码可在https://github.com/JinqianPan/MRISeqClassifier上获得。
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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