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PADS-Net: GAN-based Radiomics Using Multi-Task Network of Denoising and Segmentation for Ultrasonic Diagnosis of Parkinson Disease

Yiwen Shen,Li Chen, Jieyi Liu, Haobo Chen, Changyan Wang,Hong Ding,Qi Zhang

Computerized Medical Imaging and Graphics(2025)SCI 2区

Department of Ultrasound

Cited 0|Views6
Abstract
Parkinson disease (PD) is a prevalent neurodegenerative disorder, and its accurate diagnosis is crucial for timely intervention. We propose the PArkinson disease Denoising and Segmentation Network (PADS-Net), to simultaneously denoise and segment transcranial ultrasound images of midbrain for accurate PD diagnosis. The PADS-Net is built upon generative adversarial networks and incorporates a multi-task deep learning framework aimed at optimizing the tasks of denoising and segmentation for ultrasound images. A composite loss function including the mean absolute error, the mean squared error and the Dice loss, is adopted in the PADS-Net to effectively capture image details. The PADS-Net also integrates radiomics techniques for PD diagnosis by exploiting high-throughput features from ultrasound images. A four-branch ensemble diagnostic model is designed by utilizing two “wings” of the butterfly-shaped midbrain regions on both ipsilateral and contralateral images to enhance the accuracy of PD diagnosis. Experimental results demonstrate that the PADS-Net not only reduced speckle noise, achieving the edge-to-noise ratio of 16.90, but also attained a Dice coefficient of 0.91 for midbrain segmentation. The PADS-Net finally achieved an area under the receiver operating characteristic curve as high as 0.87 for diagnosis of PD. Our PADS-Net excels in transcranial ultrasound image denoising and segmentation and offers a potential clinical solution to accurate PD assessment.
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Key words
Parkinson disease,Transcranial ultrasound imaging,Denoising,Segmentation,Multi-task learning
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要点】:本研究提出了一种基于生成对抗网络(GAN)的PADS-Net,用于超声图像的去噪和分割,以实现对帕金森病的准确诊断,并整合了放射组学技术来提高诊断准确度。

方法】:PADS-Net采用多任务深度学习框架,同时优化去噪和分割任务,并使用包含均方误差、均绝对误差和Dice损失的复合损失函数。

实验】:在实验中,PADS-Net在去噪方面达到了16.90的边缘噪声比,在分割方面达到了0.91的Dice系数,并使用特定数据集进行测试,最终在帕金森病诊断中取得了0.87的ROC曲线下面积。具体数据集名称未在摘要中提及。