Endometriosis Labelling using Machine learning
This study developed a support vector machine model that accurately predicts endometriosis severity and classification using adnexal mass, tube blockage, lesion size, and color, achieving 84.5% test accuracy.
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References (25)
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- Endometriosis Laparoscopic Image Reconstruction Using PCA and IPCA via openalex
- Feature based analysis of endometriosis using machine learning via openalex
- Symptoms based endometriosis prediction using machine learning via openalex
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- last seen: 2026-06-04T00:00:01.174412+00:00