NeuroVLM-Bench: Evaluation of Vision-Enabled Large Language Models for Clinical Reasoning in Neurological Disorders
Katarina Trojachanec Dineva, Stefan Andonov, Ilinka Ivanoska, Ivan Kitanovski, Sasho Gramatikov, Tamara Kostova, Monika Simjanoska Misheva, Kostadin Mishev

TL;DR
This study benchmarks vision-enabled large language models for neuroimaging diagnosis, revealing strengths in imaging attributes and challenges in diagnostic reasoning, with implications for clinical decision support.
Contribution
It provides a comprehensive, fair comparison of 20 multimodal models on neuroimaging tasks, highlighting performance, reliability, and efficiency trade-offs in clinical reasoning.
Findings
Tumor classification is most reliable.
Stroke diagnosis is moderately solvable.
MS and rare abnormalities remain challenging.
Abstract
Recent advances in multimodal large language models enable new possibilities for image-based decision support. However, their reliability and operational trade-offs in neuroimaging remain insufficiently understood. We present a comprehensive benchmarking study of vision-enabled large language models for 2D neuroimaging using curated MRI and CT datasets covering multiple sclerosis, stroke, brain tumors, other abnormalities, and normal controls. Models are required to generate multiple outputs simultaneously, including diagnosis, diagnosis subtype, imaging modality, specialized sequence, and anatomical plane. Performance is evaluated across four directions: discriminative classification with abstention, calibration, structured-output validity, and computational efficiency. A multi-phase framework ensures fair comparison while controlling for selection bias. Across twenty frontier…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Artificial Intelligence in Healthcare and Education · Multimodal Machine Learning Applications
