Explainable AI-Driven Ensemble Learning for Endometriosis Severity Assessment

In: 2026 International Conference on Machine Learning and Autonomous Systems (ICMLAS) · 2026 · pp. 129–135 · doi:10.1109/icmlas67792.2026.11483904 · W7160284220
article OA: closed CC0
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AI-generated summary by claude@2026-06, 2026-06-10

This study developed an explainable AI-driven ensemble learning model to accurately assess the severity of endometriosis based on histopathological images.

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endometriosis

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last seen: 2026-06-10T17:14:06.276822+00:00
License: CC0 · commercial use OK