Publications by authors named "Johann Li"

Early diagnosis of Alzheimer's disease (AD) is crucial for its prevention, and hippocampal atrophy is a significant lesion for early diagnosis. The current DL-based AD diagnosis methods only focus on either AD classification or hippocampus segmentation independently, neglecting the correlation between the two tasks and lacking pathological interpretability. To address this issue, we propose a Reliable Hippo-guided Learning model for Alzheimer's Disease diagnosis (RLAD), which employs multi-task learning for AD classification as a main task supplemented by hippocampus segmentation.

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In the past decade, deep learning (DL) has achieved unprecedented success in numerous fields, such as computer vision and healthcare. Particularly, DL is experiencing an increasing development in advanced medical image analysis applications in terms of segmentation, classification, detection, and other tasks. On the one hand, tremendous needs that leverage DL's power for medical image analysis arise from the research community of a medical, clinical, and informatics background to share their knowledge, skills, and experience jointly.

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Article Synopsis
  • Lung cancer diagnosis is crucial, but research is hindered by a lack of available data, prompting the creation of a new pulmonary lesions dataset that includes detailed annotations.
  • The paper outlines the dataset's structure and explores the connections between nine specific attributes and lung cancer pathology using statistical analysis.
  • It also presents four potential tasks for using the dataset in computer-aided diagnosis, showcases the classification model's performance across various input modes, and introduces attention mechanisms to enhance model accuracy.
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