Improved neurological diagnoses and treatment strategies via automated human brain tissue segmentation from clinical magnetic resonance imaging

IF 4.4 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Intelligent medicine Pub Date : 2024-08-01 DOI:10.1016/j.imed.2023.10.001
Puranam Revanth Kumar , Rajesh Kumar Jha , P Akhendra Kumar , B Deevena Raju
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Abstract

Objective

Segmentation of medical images is a crucial process in various image analysis applications. Automated segmentation methods excel in accuracy when compared to manual segmentation in the context of medical image analysis. One of the essential phases in the quantitative analysis of the brain is automated brain tissue segmentation using clinically obtained magnetic resonance imaging (MRI) data. It allows for precise quantitative examination of the brain, which aids in diagnosis, identification, and classification of disorders. Consequently, the efficacy of the segmentation approach is crucial to disease diagnosis and treatment planning.

Methods

This study presented a hybrid optimization method for segmenting brain tissue in clinical MRI scans using a fractional Henry horse herd gas optimization-based Shepard convolutional neural network (FrHHGO-based ShCNN). To segment the clinical brain MRI images into white matter (WM), grey matter (GM), and cerebrospinal fluid (CSF) tissues, the proposed framework was evaluated on the Lifespan Human Connectome Projects (HCP) database. The hybrid optimization algorithm, FrHHGO, integrates the fractional Henry gas optimization (FHGO) and horse herd optimization (HHO) algorithms. Training required 30 min, whereas testing and segmentation of brain tissues from an unseen image required an average of 12 s.

Results

Compared to the results obtained with no refinements, the Skull stripping refinement showed significant improvement. As the method included a preprocessing stage, it was flexible enough to enhance image quality, allowing for better results even with low-resolution input. Maximum precision of 93.2%, recall of 91.5%, Dice score of 91.1%, and F1-score of 90.5% were achieved using the proposed FrHHGO-based ShCNN, which was superior to all other approaches.

Conclusion

The proposed method may outperform existing state-of-the-art methodologies in qualitative and quantitative measurements across a wide range of medical modalities. It might demonstrate its potential for real-life clinical application.

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从临床磁共振成像图像中自动分割人脑组织,改进神经学诊断和治疗规划
目标医学图像的分割是各种图像分析应用中的一个关键过程。在医学图像分析中,与手动分割相比,自动分割方法的准确性更胜一筹。利用临床获得的磁共振成像(MRI)数据进行脑组织自动分割是对大脑进行定量分析的重要阶段之一。它可以对大脑进行精确的定量检查,有助于疾病的诊断、识别和分类。因此,分割方法的有效性对疾病诊断和治疗计划至关重要。本研究提出了一种混合优化方法,利用基于分数亨利马群气体优化的 Shepard 卷积神经网络(FrHHGO-based ShCNN)分割临床 MRI 扫描中的脑组织。为了将临床脑部核磁共振成像图像分割为白质(WM)、灰质(GM)和脑脊液(CSF)组织,研究人员在Lifespan Human Connectome Projects(HCP)数据库上对所提出的框架进行了评估。混合优化算法 FrHHGO 整合了分数亨利气体优化(FHGO)和马群优化(HHO)算法。训练需要 30 分钟,而测试和从未曾见过的图像中分割脑组织平均需要 12 秒。由于该方法包括一个预处理阶段,因此在提高图像质量方面具有足够的灵活性,即使在输入低分辨率图像时也能获得更好的结果。使用所提出的基于 FrHHGO 的 ShCNN,精确度达到 93.2%,召回率达到 91.5%,Dice 分数达到 91.1%,F1 分数达到 90.5%,优于所有其他方法。它可以证明其在现实生活中的临床应用潜力。
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来源期刊
Intelligent medicine
Intelligent medicine Surgery, Radiology and Imaging, Artificial Intelligence, Biomedical Engineering
CiteScore
5.20
自引率
0.00%
发文量
19
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