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MEDICAL IMAGE ANALYSIS OF VERTEBRAE AND LESIONS USING CONVOLUTIONAL NEURAL NETWORKS
MPhil Thesis Defence Title: "MEDICAL IMAGE ANALYSIS OF VERTEBRAE AND LESIONS USING CONVOLUTIONAL NEURAL NETWORKS" By Miss Han ZHANG Abstract Deep learning has been very successful in different tasks with natural images in recent years. Furthermore, analyzing vertebrae and lesions in medical images seems challenging because of the high accuracy requirements and the variability of inter- and intra-class disparities in lesions from different organs. Therefore, the effectiveness of convolutional neural networks (CNN) needs to be further optimized for medical image analysis tasks. The methods and techniques proposed in this thesis can be classified into two main categories: methods for scoliosis assessment and methods for multi-organ lesion detection. Both proposed methods can improve the precision of diagnosis in Computer-Aided Diagnosis (CADx) systems. Computer tomography (CT) scans’ capabilities in detecting lesions have been increasing remarkably in the past decades. Thus, researchers are no longer satisfied with the conventional CADx systems, which can detect a single kind of diseases alone. Therefore, we propose a multi-organ lesion detection (MOLD) approach to better address real-life chest- related clinical needs. MOLD is a challenging task, especially within a large, high resolution image volume, due to various types of background information interference and large difference in lesion sizes. Furthermore, the appearance similarity between lesions and other normal tissues demands more discriminative features. In order to overcome these challenges, we introduce depth-aware (DA) and skipped-layer hierarchical training (SHT) mechanisms with the novel Dense 3D context enhanced (Dense 3DCE) lesion detection model. The novel Dense 3DCE framework considers the shallow, medium, and deep- level features together comprehensively. In addition, equipped with our SHT scheme, the backpropagation process can now be supervised under precise control, while the DA scheme can effectively incorporate the depth domain knowledge into the scheme. Extensive experiments have been carried out on a publicly available, widely-used DeepLesion dataset, and the results prove the effectiveness of our DA-SHT Dense 3DCE network in the MOLD task. Spinal diseases are common and difficult to cure, which causes much suffering. Accurate diagnosis and assessment of these diseases can considerably improve cure rates and the quality of life for patients. The spinal disease assessment relies primarily on accurate vertebra landmark detection, such as scoliosis assessment. However, existing approaches do not adequately exploit the relationships between vertebrae and analyze the global spine structure, meaning scarcity annotations are underutilized. In addition, the practical design of ground-truth is also deficient in model learning due to the sub- optimal coordinate system. Therefore, we propose a unified end-to-end vertebra land- mark detection network called Dcor-VLDet, contributing to the scoliosis assessment task. This network takes the positional information from within and between vertebrae into account. At the same time, through fusing the advantages of both Cartesian and polar coordinate systems, the symmetric mean absolute percentage error (SMAPE) value can be reduced significantly in scoliosis assessment. The experimental results demonstrate that our proposed method is superior in measuring Cobb angle and detecting landmarks on low-contrast X-ray images. Date: Tuesday, 23 August 2022 Time: 4:00pm - 6:00pm Zoom Meeting: https://hkust.zoom.us/j/96539549972?pwd=V3VRb2prUmNJYnM3Ti9wL1c0WkZQZz09 Committee Members: Prof. Albert Chung (Supervisor) Prof. Pedro Sander (Supervisor) Dr. Dan Xu (Chairperson) Dr. Hao Chen **** ALL are Welcome ****