Exploring the Limits of Foundation Models in Medical Image Segmentation: A Case Study With SAM and Genetic Algorithms

dc.contributor.authorJuan D. Gutiérrez
dc.contributor.authorNuria Lozano-García
dc.contributor.authorEmilio Delgado
dc.contributor.authorÁlvaro Rubio-Largo
dc.contributor.authorRoberto Rodriguez-Echeverria
dc.date.accessioned2026-06-16T07:44:52Z
dc.date.issued2026-06-01
dc.description.abstractThis paper investigates the limits of foundation models in medical image segmentation, mainly focusing on SAM by Meta. While previous research demonstrated SAM’s potential for cost-efficient segmentation, this study explores its performance enhancement through integration with prompt enhancement optimization and genetic algorithms, aiming to minimize user input further. As a proof of concept, we apply this novel approach to lung segmentation tasks using public axial lung CT scans, frontal chest X-ray datasets, and spleen MRIs. Our findings reveal that the genetic algorithm optimization significantly improves SAM’s segmentation accuracy, bringing it closer to the state-of-the-art performance achieved by specifically trained models. In particular, when compared with our previous approach, this technique reaches a 94.85 % Jaccard Index (+3.77 delta) and a 97.17 % Dice Score (+2.50 delta) for lung CT scans, a 93.39 % Jaccard Index (+5.95 delta) and a 96.57 %Dice Score (+3.38 delta) for chest X-rays, and a 91.00 % Jaccard Index (+6.51 delta) and a 95.07 % Dice Score (+4.12 delta) for spleen MRIs. Notably, this improvement is achieved without retraining or modifying SAM’s architecture. However, our analysis also identifies an inherent limitation in this optimization approach, revealing a performance ceiling that cannot be surpassed despite further genetic algorithm iterations. The implications of these findings emphasize the potential of combining foundation models with non-intrusive optimization techniques for cost-effective and accessible medical image segmentation. While dataset-related limitations may affect generalizability, validating the approach across broader clinical scenarios remains essential. Future work should explore applications to additional organs, diverse datasets, and the integration of expert-in-the-loop strategies to enhance clinical utility.
dc.identifier.citationExploring the Limits of Foundation Models in Medical Image Segmentation: A Case Study With SAM and Genetic Algorithms. (2026). International Journal of Interactive Multimedia and Artificial Intelligence, 9(7), 16-29. https://doi.org/10.9781/ijimai.2026.2223
dc.identifier.urihttps://reunir.unir.net/handle/123456789/19982
dc.language.isoen
dc.publisherInternational Journal of Interactive Multimedia and Artificial Intelligence
dc.relation.ispartofseriesVol. 9 No. 7
dc.subjectdeep learning
dc.subjectfoundation models
dc.subjectgenetic algorithms
dc.subjectimage segmentation
dc.subjectmedical imaging
dc.subjectzeroshot learning
dc.titleExploring the Limits of Foundation Models in Medical Image Segmentation: A Case Study With SAM and Genetic Algorithms
dc.typeArticle

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