Farah E. Shamout
2026
Cross-Lingual Empirical Evaluation of Large Language Models for Arabic Medical Tasks
Chaimae Abouzahir | Congbo Ma | Nizar Habash | Farah E. Shamout
Proceedings of the 1st Workshop on Linguistic Analysis for Health (HeaLing 2026)
Chaimae Abouzahir | Congbo Ma | Nizar Habash | Farah E. Shamout
Proceedings of the 1st Workshop on Linguistic Analysis for Health (HeaLing 2026)
In recent years, Large Language Models (LLMs) have become widely used in medical applications, such as clinical decision support, medical education and medical question answering. Yet, these models are often English-centric, limiting their robustness and reliability for linguistically diverse communities. Recent work has highlighted discrepancies in performance in low-resource languages for various medical tasks, but the underlying causes remain poorly understood. In this study, we conduct a cross-lingual empirical analysis of LLM performance on Arabic & English medical question and answering. Our findings reveal a persistent language-driven performance gap that intensifies with increasing task complexity. Tokenization analysis exposes structural fragmentation in Arabic medical text, while reliability analysis shows that model-reported confidence and explanations are poor indicators of correctness. Together, these findings underscore the need for language-aware design and evaluation strategies in LLMs for medical tasks.
MedErrBench: A Fine-Grained Multilingual Benchmark for Medical Error Detection and Correction with Clinical Expert Annotations
Congbo Ma | Yichun Zhang | Yousef Al-Jazzazi | Ahamed Foisal | Laasya Sharma | Yousra Sadqi | Khaled Saleh | Jihad Mallat | Farah E. Shamout
Findings of the Association for Computational Linguistics: ACL 2026
Congbo Ma | Yichun Zhang | Yousef Al-Jazzazi | Ahamed Foisal | Laasya Sharma | Yousra Sadqi | Khaled Saleh | Jihad Mallat | Farah E. Shamout
Findings of the Association for Computational Linguistics: ACL 2026
Inaccuracies in existing or generated clinical text may lead to serious adverse consequences, especially if it is a misdiagnosis or incorrect treatment suggestion. With Large Language Models (LLMs) increasingly being used across diverse healthcare applications, comprehensive evaluation through dedicated benchmarks is crucial. However, such datasets remain scarce, especially across diverse languages and contexts. In this paper, we introduce MedErrBench, the first multilingual benchmark for error detection, localization, and correction, developed under the guidance of experienced clinicians. Based on an expanded taxonomy of ten common error types, MedErrBench covers English, Arabic and Chinese, with natural medical cases annotated and reviewed by domain experts. We assessed the performance of a range of general-purpose, language-specific, and medical-domain language models across all three tasks. Our results reveal notable performance gaps, particularly in non-English settings, highlighting the need for clinically grounded, language-aware systems. By making MedErrBench and our evaluation protocols publicly-available, we aim to advance multilingual clinical NLP to promote safer and more equitable AI-based healthcare globally. The dataset is publicly available at: https://github.com/congboma/MedErrBench.
2025
AraHealthQA 2025: The First Shared Task on Arabic Health Question Answering
Hassan Alhuzali | Walid Al-Eisawi | Muhammad Abdul-Mageed | Chaimae Abouzahir | Mouath Abu-Daoud | Ashwag Alasmari | Renad Al-Monef | Ali Alqahtani | Lama Ayash | Leen Kharouf | Farah E. Shamout | Nizar Habash
Proceedings of The Third Arabic Natural Language Processing Conference: Shared Tasks
Hassan Alhuzali | Walid Al-Eisawi | Muhammad Abdul-Mageed | Chaimae Abouzahir | Mouath Abu-Daoud | Ashwag Alasmari | Renad Al-Monef | Ali Alqahtani | Lama Ayash | Leen Kharouf | Farah E. Shamout | Nizar Habash
Proceedings of The Third Arabic Natural Language Processing Conference: Shared Tasks