High‐quality expert annotations enhance artificial intelligence model accuracy for osteosarcoma X‐ray diagnosis

Author:

Hasei Joe1ORCID,Nakahara Ryuichi2,Otsuka Yujiro345,Nakamura Yusuke3,Hironari Tamiya6,Kahara Naoaki7,Miwa Shinji8ORCID,Ohshika Shusa9,Nishimura Shunji10,Ikuta Kunihiro11,Osaki Shuhei12,Yoshida Aki2,Fujiwara Tomohiro2ORCID,Nakata Eiji2ORCID,Kunisada Toshiyuki2,Ozaki Toshifumi2

Affiliation:

1. Department of Medical Information and Assistive Technology Development Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences Okayama Japan

2. Department of Orthopedic Surgery Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences Okayama Japan

3. Department of Radiology Juntendo University School of Medicine Tokyo Japan

4. Milliman, Inc. Tokyo Japan

5. Plusman LCC Tokyo Japan

6. Department of Musculoskeletal Oncology Service Osaka International Cancer Institute Osaka Japan

7. Department of Orthopedic Surgery Mizushima Central Hospital Okayama Japan

8. Department of Orthopedic Surgery Kanazawa University Graduate School of Medical Sciences Kanazawa Japan

9. Department of Orthopedic Surgery Hirosaki University Graduate School of Medicine Aomori Japan

10. Department of Orthopedic Surgery Kindai University Hospital Osaka Japan

11. Department of Orthopedic Surgery Nagoya University Graduate School of Medicine Nagoya Japan

12. Department of Musculoskeletal Oncology National Cancer Center Hospital Tokyo Japan

Abstract

AbstractPrimary malignant bone tumors, such as osteosarcoma, significantly affect the pediatric and young adult populations, necessitating early diagnosis for effective treatment. This study developed a high‐performance artificial intelligence (AI) model to detect osteosarcoma from X‐ray images using highly accurate annotated data to improve diagnostic accuracy at initial consultations. Traditional models trained on unannotated data have shown limited success, with sensitivities of approximately 60%–70%. In contrast, our model used a data‐centric approach with annotations from an experienced oncologist, achieving a sensitivity of 95.52%, specificity of 96.21%, and an area under the curve of 0.989. The model was trained using 468 X‐ray images from 31 osteosarcoma cases and 378 normal knee images with a strategy to maximize diversity in the training and validation sets. It was evaluated using an independent dataset of 268 osteosarcoma and 554 normal knee images to ensure generalizability. By applying the U‐net architecture and advanced image processing techniques such as renormalization and affine transformations, our AI model outperforms existing models, reducing missed diagnoses and enhancing patient outcomes by facilitating earlier treatment. This study highlights the importance of high‐quality training data and advocates a shift towards data‐centric AI development in medical imaging. These insights can be extended to other rare cancers and diseases, underscoring the potential of AI in transforming diagnostic processes in oncology. The integration of this AI model into clinical workflows could support physicians in early osteosarcoma detection, thereby improving diagnostic accuracy and patient care.

Funder

Japan Society for the Promotion of Science

Japan Agency for Medical Research and Development

Publisher

Wiley

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