2023
DOI: 10.3390/diagnostics13172727
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Opportunities and Advances in Radiomics and Radiogenomics for Pediatric Medulloblastoma Tumors

Marwa Ismail,
Stephen Craig,
Raheel Ahmed
et al.

Abstract: Recent advances in artificial intelligence have greatly impacted the field of medical imaging and vastly improved the development of computational algorithms for data analysis. In the field of pediatric neuro-oncology, radiomics, the process of obtaining high-dimensional data from radiographic images, has been recently utilized in applications including survival prognostication, molecular classification, and tumor type classification. Similarly, radiogenomics, or the integration of radiomic and genomic data, h… Show more

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Cited by 4 publications
(3 citation statements)
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“…This underscores the need for quantifying the tumor heterogeneity, which can help identify patients, within the same subgroup, with low risk that can benefit from de-escalated therapy from those with high risk and in need of intensified treatment strategies. While there are many radiomic approaches in the literature that aimed to carry out molecular subgroup classification [ 46 ], our study uniquely seeks to utilize those radiomic tools to further sub-stratify patients within the individual subgroups. Further optimization of mRRisk with rigorous validation on large multi-institutional cohorts would allow for an enriched risk stratification.…”
Section: Discussionmentioning
confidence: 99%
“…This underscores the need for quantifying the tumor heterogeneity, which can help identify patients, within the same subgroup, with low risk that can benefit from de-escalated therapy from those with high risk and in need of intensified treatment strategies. While there are many radiomic approaches in the literature that aimed to carry out molecular subgroup classification [ 46 ], our study uniquely seeks to utilize those radiomic tools to further sub-stratify patients within the individual subgroups. Further optimization of mRRisk with rigorous validation on large multi-institutional cohorts would allow for an enriched risk stratification.…”
Section: Discussionmentioning
confidence: 99%
“…Although these models may prove to be robust predictors of a given outcome, clinical integration demands further evidence of a biologic relationship and/or molecular mechanism. As the field of radiomics continues to grow and develop, intersectionality with histology [39,40], pathology [41,42], and genomics [43,44] offers high potential for biologic validation and improved clinical interpretability of radiomic models. Correlation with local pathologic analysis, for example, can provide a direct comparison of quantitative, pathologic features to explain structural characteristics underlying radiologic textures.…”
Section: Discussionmentioning
confidence: 99%
“…As the field of radiomics continues to grow and develop, intersectionality with histology [31,32], pathology [33,34], and genomics [35,36] offers high potential for biologic validation and improved clinical interpretability of radiomic models. Correlation with local pathologic analysis, for example, can provide a direct comparison of quantitative pathologic features to explain structural characteristics underlying radiologic textures.…”
Section: Discussionmentioning
confidence: 99%