Toward Head Computed Tomography Image Reconstruction Standardization With Deep-Learning-Assisted Automatic Detection

人工智能 计算机视觉 稳健性(进化) 计算机科学 迭代重建 扫描仪 医学影像学 生物化学 基因 化学
作者
Bowen Zheng,Chenxi Huang,Xiangji Chen,Yuemei Luo
出处
期刊:IEEE Transactions on Instrumentation and Measurement [Institute of Electrical and Electronics Engineers]
卷期号:73: 1-14 被引量:5
标识
DOI:10.1109/tim.2023.3329102
摘要

Three-dimensional reconstruction of head computed tomography (CT) images elucidates the intricate spatial relationships of tissue structures, thereby assisting in accurate diagnosis. Nonetheless, securing an optimal head CT scan without deviation is challenging in clinical settings, owing to poor positioning by technicians, patient's physical constraints, or CT scanner tilt angle restrictions. Manual formatting and reconstruction not only introduce subjectivity but also strain time and labor resources. To address these issues, we propose an efficient automatic head CT images 3-D reconstruction method, improving accuracy and repeatability, as well as diminishing manual intervention. Our approach uses a deep-learning-based object detection algorithm, identifying and evaluating orbitomeatal line landmarks to automatically reformat the images prior to reconstruction. Given the dearth of existing evaluations of object detection algorithms in the context of head CT images, we compared 12 methods from both theoretical and experimental perspectives. By exploring their precision, efficiency, and robustness, we singled out the lightweight YOLOv8 as the aptest algorithm for our task, with an mAP of 92.77% and impressive robustness against class imbalance. Our qualitative evaluation of standardized reconstruction results demonstrates the clinical practicability and validity of our method.

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