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Enhanced IDOL segmentation framework using personalized hyperspace learning IDOL
DC Field | Value | Language |
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dc.contributor.author | 김진성 | - |
dc.date.accessioned | 2025-07-09T08:26:48Z | - |
dc.date.available | 2025-07-09T08:26:48Z | - |
dc.date.issued | 2024-11 | - |
dc.identifier.issn | 0094-2405 | - |
dc.identifier.uri | https://ir.ymlib.yonsei.ac.kr/handle/22282913/206346 | - |
dc.description.abstract | Background: Adaptive radiotherapy (ART) workflows have been increasingly adopted to achieve dose escalation and tissue sparing under shifting anatomic conditions, but the necessity of recontouring and the associated time burden hinders a real-time or online ART workflow. In response to this challenge, approaches to auto-segmentation involving deformable image registration, atlas-based segmentation, and deep learning-based segmentation (DLS) have been developed. Despite the particular promise shown by DLS methods, implementing these approaches in a clinical setting remains a challenge, namely due to the difficulty of curating a data set of sufficient size and quality so as to achieve generalizability in a trained model. Purpose: To address this challenge, we have developed an intentional deep overfit learning (IDOL) framework tailored to the auto-segmentation task. However, certain limitations were identified, particularly the insufficiency of the personalized dataset to effectively overfit the model. In this study, we introduce a personalized hyperspace learning (PHL)-IDOL segmentation framework capable of generating datasets that induce the model to overfit specific patient characteristics for medical image segmentation. Methods: The PHL-IDOL model is trained in two stages. In the first, a conventional, general model is trained with a diverse set of patient data (n = 100 patients) consisting of CT images and clinical contours. Following this, the general model is tuned with a data set consisting of two components: (a) selection of a subset of the patient data (m < n) using the similarity metrics (mean square error (MSE), peak signal-to-noise ratio (PSNR), structural similarity index (SSIM), and the universal quality image index (UQI) values); (b) adjust the CT and the clinical contours using a deformed vector generated from the reference patient and the selected patients using (a). After training, the general model, the continual model, the conventional IDOL model, and the proposed PHL-IDOL model were evaluated using the volumetric dice similarity coefficient (VDSC) and the Hausdorff distance 95% (HD95%) computed for 18 structures in 20 test patients. Results: Implementing the PHL-IDOL framework resulted in improved segmentation performance for each patient. The Dice scores increased from 0.81 ± 0.05 with the general model, 0.83 ± 0.04 for the continual model, 0.83 ± 0.04 for the conventional IDOL model to an average of 0.87 ± 0.03 with the PHL-IDOL model. Similarly, the Hausdorff distance decreased from 3.06 ± 0.99 with the general model, 2.84 ± 0.69 for the continual model, 2.79 ± 0.79 for the conventional IDOL model and 2.36 ± 0.52 for the PHL-IDOL model. All the standard deviations were decreased by nearly half of the values comparing the general model and the PHL-IDOL model. Conclusion: The PHL-IDOL framework applied to the auto-segmentation task achieves improved performance compared to the general DLS approach, demonstrating the promise of leveraging patient-specific prior information in a task central to online ART workflows. | - |
dc.description.statementOfResponsibility | restriction | - |
dc.language | English | - |
dc.publisher | Published for the American Assn. of Physicists in Medicine by the American Institute of Physics. | - |
dc.relation.isPartOf | MEDICAL PHYSICS | - |
dc.rights | CC BY-NC-ND 2.0 KR | - |
dc.title | Enhanced IDOL segmentation framework using personalized hyperspace learning IDOL | - |
dc.type | Article | - |
dc.contributor.college | College of Medicine (의과대학) | - |
dc.contributor.department | Dept. of Radiation Oncology (방사선종양학교실) | - |
dc.contributor.googleauthor | Byong Su Choi | - |
dc.contributor.googleauthor | Chris J Beltran | - |
dc.contributor.googleauthor | Sven Olberg | - |
dc.contributor.googleauthor | Xiaoying Liang | - |
dc.contributor.googleauthor | Bo Lu | - |
dc.contributor.googleauthor | Jun Tan | - |
dc.contributor.googleauthor | Alessio Parisi | - |
dc.contributor.googleauthor | Janet Denbeigh | - |
dc.contributor.googleauthor | Sridhar Yaddanapudi | - |
dc.contributor.googleauthor | Jin Sung Kim | - |
dc.contributor.googleauthor | Keith M Furutani | - |
dc.contributor.googleauthor | Justin C Park | - |
dc.contributor.googleauthor | Bongyong Song | - |
dc.identifier.doi | 10.1002/mp.17361 | - |
dc.contributor.localId | A04548 | - |
dc.relation.journalcode | J02206 | - |
dc.identifier.eissn | 2473-4209 | - |
dc.identifier.pmid | 39167055 | - |
dc.identifier.url | https://aapm.onlinelibrary.wiley.com/doi/10.1002/mp.17361 | - |
dc.subject.keyword | ART | - |
dc.subject.keyword | auto segmentation | - |
dc.subject.keyword | deep learning | - |
dc.subject.keyword | head & neck | - |
dc.subject.keyword | overfitting | - |
dc.contributor.alternativeName | Kim, Jinsung | - |
dc.contributor.affiliatedAuthor | 김진성 | - |
dc.citation.volume | 51 | - |
dc.citation.number | 11 | - |
dc.citation.startPage | 8568 | - |
dc.citation.endPage | 8583 | - |
dc.identifier.bibliographicCitation | MEDICAL PHYSICS, Vol.51(11) : 8568-8583, 2024-11 | - |
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