2022
DOI: 10.1101/2022.11.14.22282304
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Image-localized biopsy mapping of brain tumor heterogeneity: A single-center study protocol

Abstract: Brain cancers pose a novel set of difficulties due to the limited accessibility of human brain tumor tissue. For this reason, clinical decision-making relies heavily on MR imaging interpretation, yet the mapping between MRI features and underlying biology remains ambiguous. Standard tissue sampling fails to capture the full heterogeneity of the disease. Biopsies are required to obtain a pathological diagnosis and are predominantly taken from the tumor core, which often has different traits to the surrounding i… Show more

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Cited by 3 publications
(5 citation statements)
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“…Although we strive to include as much data as possible within model training for the sake of generalizability to the clinic, we may occasionally remove patients from analyses if they do not have the necessary imaging required to generate important model features. Similarly, samples may be removed from analyses if there is a high level of uncertainty or technical error (e.g., coordinates not collected, breakdown in communication in the operating room) during their collection ( 40 ).…”
Section: Framework To Generate Image-based Machine Learning Models (M...mentioning
confidence: 99%
“…Although we strive to include as much data as possible within model training for the sake of generalizability to the clinic, we may occasionally remove patients from analyses if they do not have the necessary imaging required to generate important model features. Similarly, samples may be removed from analyses if there is a high level of uncertainty or technical error (e.g., coordinates not collected, breakdown in communication in the operating room) during their collection ( 40 ).…”
Section: Framework To Generate Image-based Machine Learning Models (M...mentioning
confidence: 99%
“…A major challenge for such prediction is the lack of large image-localized biopsy datasets (19,20) to train deep learning (DL) models that are well-known to be heavilyparameterized and data-hungry. Creation of large training datasets is limited by various factors such as the invasiveness and high expense of sample acquisition, need of highly-specialized experts to create accurate labels, and difficulty in patient recruitment (19). Moreover, the lack of large datasets has severely limited the number of studies focusing on predicting regional characteristics within each lesion, which are crucial for revealing intratumoral heterogeneity.…”
Section: Introductionmentioning
confidence: 99%
“…However, precise representations of intratumoral heterogeneity require voxel-wise labels (e.g., image-localized biopsies) that reflect local or regional characteristics of the lesion. A major challenge for such prediction is the lack of large image-localized biopsy datasets (19,20) to train deep learning (DL) models that are well-known to be heavilyparameterized and data-hungry. Creation of large training datasets is limited by various factors such as the invasiveness and high expense of sample acquisition, need of highly-specialized experts to create accurate labels, and difficulty in patient recruitment (19).…”
Section: Introductionmentioning
confidence: 99%
“…However, precise representations of intratumoral heterogeneity require voxel-wise labels (e.g., image-localized biopsies) that reflect local or regional characteristics of the lesion. A major challenge for such prediction is the lack of large image-localized biopsy datasets (19, 20) to train deep learning (DL) models that are well-known to be heavily-parameterized and data-hungry. Creation of large training datasets is limited by various factors such as the invasiveness and high expense of sample acquisition, need of highly-specialized experts to create accurate labels, and difficulty in patient recruitment (19).…”
Section: Introductionmentioning
confidence: 99%
“…A major challenge for such prediction is the lack of large image-localized biopsy datasets (19, 20) to train deep learning (DL) models that are well-known to be heavily-parameterized and data-hungry. Creation of large training datasets is limited by various factors such as the invasiveness and high expense of sample acquisition, need of highly-specialized experts to create accurate labels, and difficulty in patient recruitment (19). Moreover, the lack of large datasets has severely limited the number of studies focusing on predicting regional characteristics within each lesion, which are crucial for revealing intratumoral heterogeneity.…”
Section: Introductionmentioning
confidence: 99%