![]() ![]() How to assist doctors in medical image interpretation has become an important and challenging task for computers. However, the rapid growth of medical imaging data brings heavy workload to radiologists for image reading and report writing. In a real clinical scenario, professional radiologists review and analyze medical images empirically, then describe imaging findings and write the diagnosis conclusions in semi-structured reports. Medical imaging data is the key basis for early screening, diagnosis, and treatment of diseases. Open Access This is an open access article distributed under the CC BY-NC 4.0 license ( ). ![]() The experimental results indicate that the proposed TMRGM model is able to simulate the reporting process, and there is still much room for improvement in clinical application. Specifically, our method achieves the BLEU-1 of 0.419, the METEOR of 0.183, the ROUGE score of 0.280, and the CIDEr of 0.359, which are comparable with the SOTA models. ![]() In this study, we developed an experimental dataset based on the IU X-ray collection to validate the effectiveness of TMRGM model. Considering the different linguistic and visual characteristics in reports of different crowds, we proposed a template-based multi-attention report generation model (TMRGM) for the healthy individuals and abnormal ones respectively. This paper aims to extract valuable information automatically from medical images to assist doctors in chest X-ray image interpretation. The rapid growth of medical imaging data brings heavy pressure to radiologists for imaging diagnosis and report writing. ![]()
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |