Cargando…
Radiological tumor classification across imaging modality and histology
Radiomics refers to the high-throughput extraction of quantitative features from radiological scans and is widely used to search for imaging biomarkers for prediction of clinical outcomes. Current radiomic signatures suffer from limited reproducibility and generalizability, because most features are...
Autores principales: | , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8612063/ https://www.ncbi.nlm.nih.gov/pubmed/34841195 http://dx.doi.org/10.1038/s42256-021-00377-0 |
_version_ | 1784603407203434496 |
---|---|
author | Wu, Jia Li, Chao Gensheimer, Michael Padda, Sukhmani Kato, Fumi Shirato, Hiroki Wei, Yiran Schönlieb, Carola-Bibiane Price, Stephen John Jaffray, David Heymach, John Neal, Joel W Loo, Billy W Wakelee, Heather Diehn, Maximilian Li, Ruijiang |
author_facet | Wu, Jia Li, Chao Gensheimer, Michael Padda, Sukhmani Kato, Fumi Shirato, Hiroki Wei, Yiran Schönlieb, Carola-Bibiane Price, Stephen John Jaffray, David Heymach, John Neal, Joel W Loo, Billy W Wakelee, Heather Diehn, Maximilian Li, Ruijiang |
author_sort | Wu, Jia |
collection | PubMed |
description | Radiomics refers to the high-throughput extraction of quantitative features from radiological scans and is widely used to search for imaging biomarkers for prediction of clinical outcomes. Current radiomic signatures suffer from limited reproducibility and generalizability, because most features are dependent on imaging modality and tumor histology, making them sensitive to variations in scan protocol. Here, we propose novel radiological features that are specially designed to ensure compatibility across diverse tissues and imaging contrast. These features provide systematic characterization of tumor morphology and spatial heterogeneity. In an international multi-institution study of 1,682 patients, we discover and validate four unifying imaging subtypes across three malignancies and two major imaging modalities. These tumor subtypes demonstrate distinct molecular characteristics and prognoses after conventional therapies. In advanced lung cancer treated with immunotherapy, one subtype is associated with improved survival and increased tumor-infiltrating lymphocytes compared with the others. Deep learning enables automatic tumor segmentation and reproducible subtype identification, which can facilitate practical implementation. The unifying radiological tumor classification may inform prognosis and treatment response for precision medicine. |
format | Online Article Text |
id | pubmed-8612063 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
record_format | MEDLINE/PubMed |
spelling | pubmed-86120632022-02-09 Radiological tumor classification across imaging modality and histology Wu, Jia Li, Chao Gensheimer, Michael Padda, Sukhmani Kato, Fumi Shirato, Hiroki Wei, Yiran Schönlieb, Carola-Bibiane Price, Stephen John Jaffray, David Heymach, John Neal, Joel W Loo, Billy W Wakelee, Heather Diehn, Maximilian Li, Ruijiang Nat Mach Intell Article Radiomics refers to the high-throughput extraction of quantitative features from radiological scans and is widely used to search for imaging biomarkers for prediction of clinical outcomes. Current radiomic signatures suffer from limited reproducibility and generalizability, because most features are dependent on imaging modality and tumor histology, making them sensitive to variations in scan protocol. Here, we propose novel radiological features that are specially designed to ensure compatibility across diverse tissues and imaging contrast. These features provide systematic characterization of tumor morphology and spatial heterogeneity. In an international multi-institution study of 1,682 patients, we discover and validate four unifying imaging subtypes across three malignancies and two major imaging modalities. These tumor subtypes demonstrate distinct molecular characteristics and prognoses after conventional therapies. In advanced lung cancer treated with immunotherapy, one subtype is associated with improved survival and increased tumor-infiltrating lymphocytes compared with the others. Deep learning enables automatic tumor segmentation and reproducible subtype identification, which can facilitate practical implementation. The unifying radiological tumor classification may inform prognosis and treatment response for precision medicine. 2021-08-09 2021-09 /pmc/articles/PMC8612063/ /pubmed/34841195 http://dx.doi.org/10.1038/s42256-021-00377-0 Text en Users may view, print, copy, and download text and data-mine the content in such documents, for the purposes of academic research, subject always to the full Conditions of use: https://www.springernature.com/gp/open-research/policies/accepted-manuscript-terms |
spellingShingle | Article Wu, Jia Li, Chao Gensheimer, Michael Padda, Sukhmani Kato, Fumi Shirato, Hiroki Wei, Yiran Schönlieb, Carola-Bibiane Price, Stephen John Jaffray, David Heymach, John Neal, Joel W Loo, Billy W Wakelee, Heather Diehn, Maximilian Li, Ruijiang Radiological tumor classification across imaging modality and histology |
title | Radiological tumor classification across imaging modality and histology |
title_full | Radiological tumor classification across imaging modality and histology |
title_fullStr | Radiological tumor classification across imaging modality and histology |
title_full_unstemmed | Radiological tumor classification across imaging modality and histology |
title_short | Radiological tumor classification across imaging modality and histology |
title_sort | radiological tumor classification across imaging modality and histology |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8612063/ https://www.ncbi.nlm.nih.gov/pubmed/34841195 http://dx.doi.org/10.1038/s42256-021-00377-0 |
work_keys_str_mv | AT wujia radiologicaltumorclassificationacrossimagingmodalityandhistology AT lichao radiologicaltumorclassificationacrossimagingmodalityandhistology AT gensheimermichael radiologicaltumorclassificationacrossimagingmodalityandhistology AT paddasukhmani radiologicaltumorclassificationacrossimagingmodalityandhistology AT katofumi radiologicaltumorclassificationacrossimagingmodalityandhistology AT shiratohiroki radiologicaltumorclassificationacrossimagingmodalityandhistology AT weiyiran radiologicaltumorclassificationacrossimagingmodalityandhistology AT schonliebcarolabibiane radiologicaltumorclassificationacrossimagingmodalityandhistology AT pricestephenjohn radiologicaltumorclassificationacrossimagingmodalityandhistology AT jaffraydavid radiologicaltumorclassificationacrossimagingmodalityandhistology AT heymachjohn radiologicaltumorclassificationacrossimagingmodalityandhistology AT nealjoelw radiologicaltumorclassificationacrossimagingmodalityandhistology AT loobillyw radiologicaltumorclassificationacrossimagingmodalityandhistology AT wakeleeheather radiologicaltumorclassificationacrossimagingmodalityandhistology AT diehnmaximilian radiologicaltumorclassificationacrossimagingmodalityandhistology AT liruijiang radiologicaltumorclassificationacrossimagingmodalityandhistology |