An ensemble deep learning diagnostic system for determining Clinical Activity Scores in thyroid-associated ophthalmopathy: integrating multi-view multimodal images from anterior segment slit-lamp photographs and facial images

Front Endocrinol (Lausanne). 2024 Apr 2:15:1365350. doi: 10.3389/fendo.2024.1365350. eCollection 2024.

Abstract

Background: Thyroid-associated ophthalmopathy (TAO) is the most prevalent autoimmune orbital condition, significantly impacting patients' appearance and quality of life. Early and accurate identification of active TAO along with timely treatment can enhance prognosis and reduce the occurrence of severe cases. Although the Clinical Activity Score (CAS) serves as an effective assessment system for TAO, it is susceptible to assessor experience bias. This study aimed to develop an ensemble deep learning system that combines anterior segment slit-lamp photographs of patients with facial images to simulate expert assessment of TAO.

Method: The study included 156 patients with TAO who underwent detailed diagnosis and treatment at Shanxi Eye Hospital Affiliated to Shanxi Medical University from May 2020 to September 2023. Anterior segment slit-lamp photographs and facial images were used as different modalities and analyzed from multiple perspectives. Two ophthalmologists with more than 10 years of clinical experience independently determined the reference CAS for each image. An ensemble deep learning model based on the residual network was constructed under supervised learning to predict five key inflammatory signs (redness of the eyelids and conjunctiva, and swelling of the eyelids, conjunctiva, and caruncle or plica) associated with TAO, and to integrate these objective signs with two subjective symptoms (spontaneous retrobulbar pain and pain on attempted upward or downward gaze) in order to assess TAO activity.

Results: The proposed model achieved 0.906 accuracy, 0.833 specificity, 0.906 precision, 0.906 recall, and 0.906 F1-score in active TAO diagnosis, demonstrating advanced performance in predicting CAS and TAO activity signs compared to conventional single-view unimodal approaches. The integration of multiple views and modalities, encompassing both anterior segment slit-lamp photographs and facial images, significantly improved the prediction accuracy of the model for TAO activity and CAS.

Conclusion: The ensemble multi-view multimodal deep learning system developed in this study can more accurately assess the clinical activity of TAO than traditional methods that solely rely on facial images. This innovative approach is intended to enhance the efficiency of TAO activity assessment, providing a novel means for its comprehensive, early, and precise evaluation.

Keywords: active TAO diagnosis; clinical activity score; ensemble deep learning; multi-view multimodal; thyroid-associated ophthalmopathy.

MeSH terms

  • Deep Learning*
  • Graves Ophthalmopathy* / diagnostic imaging
  • Humans
  • Orbit
  • Pain
  • Quality of Life

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This work was supported by the Key Research and Development Program of Shanxi Province (Grant No. 201903D311009), Key Research and Development Program of Health Commission of Shanxi Province (Grant No. 2020XM07), Shanxi Province Key Laboratory of Ophthalmology (Grant No. 202104010910013), Inheritance and Innovation Project of Shanxi Provincial Administration of Traditional Chinese Medicine (2020ZYYC059), and Development Program of Shanxi Province Key Laboratory of Ophthalmology from the Health Commission of Shanxi Province (Grant No. 2020SYS12). The work was also partially sponsored by the Research Funds of Shanxi Transformation and Comprehensive Reform Demonstration Zone (Grant No. 2018KJCX04) and Fund for Shanxi “1331 Project”, and supported by the Fundamental Research Program of Shanxi Province (No.202203021211006).