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Beyond radiologist-level liver lesion detection on multi-phase contrast-enhanced CT images by deep learning

Lei Wu, Haishuai Wang, Yining Chen, Xiang Zhang, Tianyun Zhang, Ning Shen, Guangyu Tao, Zhongquan Sun, Yuan Ding, Weilin Wang, Jiajun Bu

2023iScience20 citationsDOIOpen Access PDF

Abstract

Accurate detection of liver lesions from multi-phase contrast-enhanced CT (CECT) scans is a fundamental step for precise liver diagnosis and treatment. However, the analysis of multi-phase contexts is heavily challenged by the misalignment caused by respiration coupled with the movement of organs. Here, we proposed an AI system for multi-phase liver lesion segmentation (named MULLET) for precise and fully automatic segmentation of real-patient CECT images. MULLET enables effectively embedding the important ROIs of CECT images and exploring multi-phase contexts by introducing a transformer-based attention mechanism. Evaluated on 1,229 CECT scans from 1,197 patients, MULLET demonstrated significant performance gains in terms of Dice, Recall, and F2 score, which are 5.80%, 6.57%, and 5.87% higher than state of the arts, respectively. MULLET has been successfully deployed in real-world settings. The deployed AI web server provides a powerful system to boost clinical workflows of liver lesion diagnosis and could be straightforwardly extended to general CECT analyses.

Topics & Concepts

LesionComputer scienceSegmentationArtificial intelligenceWorkflowMulletRadiologyComputer visionPattern recognition (psychology)MedicinePathologyBiologyFish <Actinopterygii>FisheryDatabaseAdvanced X-ray and CT ImagingRadiomics and Machine Learning in Medical ImagingBrain Tumor Detection and Classification
Beyond radiologist-level liver lesion detection on multi-phase contrast-enhanced CT images by deep learning | Litcius