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A pathology foundation model for cancer diagnosis and prognosis prediction
by
Zhao, Junhan
, Dillon, Deborah
, Li, Yu
, Lin, Nancy U.
, Meredith, David
, Yang, Sen
, Zhang, Jing
, Ogino, Shuji
, Jin, Jietian
, Zhang, Jiayu
, Zhu, Junyou
, Yuan, Wei
, Wang, Kanran
, Li, Ruijiang
, Denize, Thomas
, Tang, Hongping
, Ligon, Keith L.
, Wang, Xiyue
, Signoretti, Sabina
, Sholl, Lynette
, Han, Xiao
, Peng, Yulong
, Yu, Kun-Hsing
, Wang, Fang
, Marostica, Eliana
, Nasrallah, MacLean P.
, Jackson, Christopher R.
, Golden, Jeffrey A.
, Zhang, Jun
in
59
/ 631/114/1305
/ 631/114/1564
/ 631/114/2397
/ 631/114/2413
/ 631/67
/ Architecture
/ Artificial intelligence
/ Biopsy
/ Cancer
/ Cervix
/ Colon
/ Computer vision
/ Datasets
/ Datasets as Topic
/ Deep learning
/ Deep Learning - standards
/ Digital imaging
/ Digitization
/ Endometrium
/ Female
/ Histocytochemistry
/ Histopathology
/ Humanities and Social Sciences
/ Humans
/ Identification
/ Image resolution
/ Machine learning
/ Male
/ Medical diagnosis
/ Medical imaging
/ Medical prognosis
/ multidisciplinary
/ Neoplasms - classification
/ Neoplasms - diagnosis
/ Neoplasms - pathology
/ Observational learning
/ Pathology
/ Pathology, Clinical - methods
/ Pathology, Clinical - standards
/ Pattern recognition
/ Pattern Recognition, Automated - methods
/ Pattern Recognition, Automated - standards
/ Prognosis
/ Prostate
/ Representations
/ Reproducibility of Results
/ Science
/ Science (multidisciplinary)
/ Sensitivity and Specificity
/ Slide preparation
/ Supervised learning
/ Supervised Machine Learning - standards
2024
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A pathology foundation model for cancer diagnosis and prognosis prediction
by
Zhao, Junhan
, Dillon, Deborah
, Li, Yu
, Lin, Nancy U.
, Meredith, David
, Yang, Sen
, Zhang, Jing
, Ogino, Shuji
, Jin, Jietian
, Zhang, Jiayu
, Zhu, Junyou
, Yuan, Wei
, Wang, Kanran
, Li, Ruijiang
, Denize, Thomas
, Tang, Hongping
, Ligon, Keith L.
, Wang, Xiyue
, Signoretti, Sabina
, Sholl, Lynette
, Han, Xiao
, Peng, Yulong
, Yu, Kun-Hsing
, Wang, Fang
, Marostica, Eliana
, Nasrallah, MacLean P.
, Jackson, Christopher R.
, Golden, Jeffrey A.
, Zhang, Jun
in
59
/ 631/114/1305
/ 631/114/1564
/ 631/114/2397
/ 631/114/2413
/ 631/67
/ Architecture
/ Artificial intelligence
/ Biopsy
/ Cancer
/ Cervix
/ Colon
/ Computer vision
/ Datasets
/ Datasets as Topic
/ Deep learning
/ Deep Learning - standards
/ Digital imaging
/ Digitization
/ Endometrium
/ Female
/ Histocytochemistry
/ Histopathology
/ Humanities and Social Sciences
/ Humans
/ Identification
/ Image resolution
/ Machine learning
/ Male
/ Medical diagnosis
/ Medical imaging
/ Medical prognosis
/ multidisciplinary
/ Neoplasms - classification
/ Neoplasms - diagnosis
/ Neoplasms - pathology
/ Observational learning
/ Pathology
/ Pathology, Clinical - methods
/ Pathology, Clinical - standards
/ Pattern recognition
/ Pattern Recognition, Automated - methods
/ Pattern Recognition, Automated - standards
/ Prognosis
/ Prostate
/ Representations
/ Reproducibility of Results
/ Science
/ Science (multidisciplinary)
/ Sensitivity and Specificity
/ Slide preparation
/ Supervised learning
/ Supervised Machine Learning - standards
2024
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Do you wish to request the book?
A pathology foundation model for cancer diagnosis and prognosis prediction
by
Zhao, Junhan
, Dillon, Deborah
, Li, Yu
, Lin, Nancy U.
, Meredith, David
, Yang, Sen
, Zhang, Jing
, Ogino, Shuji
, Jin, Jietian
, Zhang, Jiayu
, Zhu, Junyou
, Yuan, Wei
, Wang, Kanran
, Li, Ruijiang
, Denize, Thomas
, Tang, Hongping
, Ligon, Keith L.
, Wang, Xiyue
, Signoretti, Sabina
, Sholl, Lynette
, Han, Xiao
, Peng, Yulong
, Yu, Kun-Hsing
, Wang, Fang
, Marostica, Eliana
, Nasrallah, MacLean P.
, Jackson, Christopher R.
, Golden, Jeffrey A.
, Zhang, Jun
in
59
/ 631/114/1305
/ 631/114/1564
/ 631/114/2397
/ 631/114/2413
/ 631/67
/ Architecture
/ Artificial intelligence
/ Biopsy
/ Cancer
/ Cervix
/ Colon
/ Computer vision
/ Datasets
/ Datasets as Topic
/ Deep learning
/ Deep Learning - standards
/ Digital imaging
/ Digitization
/ Endometrium
/ Female
/ Histocytochemistry
/ Histopathology
/ Humanities and Social Sciences
/ Humans
/ Identification
/ Image resolution
/ Machine learning
/ Male
/ Medical diagnosis
/ Medical imaging
/ Medical prognosis
/ multidisciplinary
/ Neoplasms - classification
/ Neoplasms - diagnosis
/ Neoplasms - pathology
/ Observational learning
/ Pathology
/ Pathology, Clinical - methods
/ Pathology, Clinical - standards
/ Pattern recognition
/ Pattern Recognition, Automated - methods
/ Pattern Recognition, Automated - standards
/ Prognosis
/ Prostate
/ Representations
/ Reproducibility of Results
/ Science
/ Science (multidisciplinary)
/ Sensitivity and Specificity
/ Slide preparation
/ Supervised learning
/ Supervised Machine Learning - standards
2024
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A pathology foundation model for cancer diagnosis and prognosis prediction
Journal Article
A pathology foundation model for cancer diagnosis and prognosis prediction
2024
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Overview
Histopathology image evaluation is indispensable for cancer diagnoses and subtype classification. Standard artificial intelligence methods for histopathology image analyses have focused on optimizing specialized models for each diagnostic task
1
,
2
. Although such methods have achieved some success, they often have limited generalizability to images generated by different digitization protocols or samples collected from different populations
3
. Here, to address this challenge, we devised the Clinical Histopathology Imaging Evaluation Foundation (CHIEF) model, a general-purpose weakly supervised machine learning framework to extract pathology imaging features for systematic cancer evaluation. CHIEF leverages two complementary pretraining methods to extract diverse pathology representations: unsupervised pretraining for tile-level feature identification and weakly supervised pretraining for whole-slide pattern recognition. We developed CHIEF using 60,530 whole-slide images spanning 19 anatomical sites. Through pretraining on 44 terabytes of high-resolution pathology imaging datasets, CHIEF extracted microscopic representations useful for cancer cell detection, tumour origin identification, molecular profile characterization and prognostic prediction. We successfully validated CHIEF using 19,491 whole-slide images from 32 independent slide sets collected from 24 hospitals and cohorts internationally. Overall, CHIEF outperformed the state-of-the-art deep learning methods by up to 36.1%, showing its ability to address domain shifts observed in samples from diverse populations and processed by different slide preparation methods. CHIEF provides a generalizable foundation for efficient digital pathology evaluation for patients with cancer.
A study describes the development of a generalizable foundation machine learning framework to extract pathology imaging features for cancer diagnosis and prognosis prediction.
Publisher
Nature Publishing Group UK,Nature Publishing Group
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