33

A DeepSeek-Powered AI System for Automated Chest Radiograph Interpretation in Clinical Practice

Yaowei Bai
Ruiheng Zhang
Yu Lei
Xuhua Duan
Jingfeng Yao
Shuguang Ju
Chaoyang Wang
Wei Yao
Yiwan Guo
Guilin Zhang
Chao Wan
Qian Yuan
Lei Chen
Wenjuan Tang
Biqiang Zhu
Xinggang Wang
Tao Sun
Wei Zhou
Dacheng Tao
Yongchao Xu
Chuansheng Zheng
Huangxuan Zhao
Bo Du
Main:29 Pages
4 Figures
1 Tables
Abstract

A global shortage of radiologists has been exacerbated by the significant volume of chest X-ray workloads, particularly in primary care. Although multimodal large language models show promise, existing evaluations predominantly rely on automated metrics or retrospective analyses, lacking rigorous prospective clinical validation. Janus-Pro-CXR (1B), a chest X-ray interpretation system based on DeepSeek Janus-Pro model, was developed and rigorously validated through a multicenter prospective trial (NCT07117266). Our system outperforms state-of-the-art X-ray report generation models in automated report generation, surpassing even larger-scale models including ChatGPT 4o (200B parameters), while demonstrating reliable detection of six clinically critical radiographic findings. Retrospective evaluation confirms significantly higher report accuracy than Janus-Pro and ChatGPT 4o. In prospective clinical deployment, AI assistance significantly improved report quality scores, reduced interpretation time by 18.3% (P < 0.001), and was preferred by a majority of experts in 54.3% of cases. Through lightweight architecture and domain-specific optimization, Janus-Pro-CXR improves diagnostic reliability and workflow efficiency, particularly in resource-constrained settings. The model architecture and implementation framework will be open-sourced to facilitate the clinical translation of AI-assisted radiology solutions.

View on arXiv
Comments on this paper