Improving artificial intelligence pipeline for liver malignancy diagnosis using ultrasound images and video frames

Author:

Xu Yiming1ORCID,Zheng Bowen2,Liu Xiaohong1,Wu Tao2,Ju Jinxiu2,Wang Shijie2,Lian Yufan2,Zhang Hongjun2,Liang Tong3,Sang Ye4,Jiang Rui5,Wang Guangyu6,Ren Jie2,Chen Ting1

Affiliation:

1. Tsinghua University Department of Computer Science and Technology & Institute of Artificial Intelligence & BNRist, , Beijing, China

2. The Third Affiliated Hospital of Sun Yat-Sen University , Guangzhou, Guangdong , China

3. Foshan Traditional Chinese Medicine Hospital , Foshan, Guangdong , China

4. China Three Gorges University & Yichang Central People's Hospital The First College of Clinical Medical Science, , Yichang 443003 , China

5. Tsinghua University Department of Automation & BNRist, , Beijing, China

6. Beijing University of Posts and Telecommunications School of Information and Communication Engineering, , Beijing, China

Abstract

Abstract Recent developments of deep learning methods have demonstrated their feasibility in liver malignancy diagnosis using ultrasound (US) images. However, most of these methods require manual selection and annotation of US images by radiologists, which limit their practical application. On the other hand, US videos provide more comprehensive morphological information about liver masses and their relationships with surrounding structures than US images, potentially leading to a more accurate diagnosis. Here, we developed a fully automated artificial intelligence (AI) pipeline to imitate the workflow of radiologists for detecting liver masses and diagnosing liver malignancy. In this pipeline, we designed an automated mass-guided strategy that used segmentation information to direct diagnostic models to focus on liver masses, thus increasing diagnostic accuracy. The diagnostic models based on US videos utilized bi-directional convolutional long short-term memory modules with an attention-boosted module to learn and fuse spatiotemporal information from consecutive video frames. Using a large-scale dataset of 50 063 US images and video frames from 11 468 patients, we developed and tested the AI pipeline and investigated its applications. A dataset of annotated US images is available at https://doi.org/10.5281/zenodo.7272660.

Funder

Tsinghua-Qingdao Institute of Data Science

Guoqiang Institute of Tsinghua University

National Natural Science Foundation of China

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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