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Automated real-world data integration improves cancer outcome prediction.

Authors :
Jee J
Fong C
Pichotta K
Tran TN
Luthra A
Waters M
Fu C
Altoe M
Liu SY
Maron SB
Ahmed M
Kim S
Pirun M
Chatila WK
de Bruijn I
Pasha A
Kundra R
Gross B
Mastrogiacomo B
Aprati TJ
Liu D
Gao J
Capelletti M
Pekala K
Loudon L
Perry M
Bandlamudi C
Donoghue M
Satravada BA
Martin A
Shen R
Chen Y
Brannon AR
Chang J
Braunstein L
Li A
Safonov A
Stonestrom A
Sanchez-Vela P
Wilhelm C
Robson M
Scher H
Ladanyi M
Reis-Filho JS
Solit DB
Jones DR
Gomez D
Yu H
Chakravarty D
Yaeger R
Abida W
Park W
O'Reilly EM
Garcia-Aguilar J
Socci N
Sanchez-Vega F
Carrot-Zhang J
Stetson PD
Levine R
Rudin CM
Berger MF
Shah SP
Schrag D
Razavi P
Kehl KL
Li BT
Riely GJ
Schultz N
Source :
Nature [Nature] 2024 Nov 06. Date of Electronic Publication: 2024 Nov 06.
Publication Year :
2024
Publisher :
Ahead of Print

Abstract

The digitization of health records and growing availability of tumour DNA sequencing provide an opportunity to study the determinants of cancer outcomes with unprecedented richness. Patient data are often stored in unstructured text and siloed datasets. Here we combine natural language processing annotations <superscript>1,2</superscript> with structured medication, patient-reported demographic, tumour registry and tumour genomic data from 24,950 patients at Memorial Sloan Kettering Cancer Center to generate a clinicogenomic, harmonized oncologic real-world dataset (MSK-CHORD). MSK-CHORD includes data for non-small-cell lung (n = 7,809), breast (n = 5,368), colorectal (n = 5,543), prostate (n = 3,211) and pancreatic (n = 3,109) cancers and enables discovery of clinicogenomic relationships not apparent in smaller datasets. Leveraging MSK-CHORD to train machine learning models to predict overall survival, we find that models including features derived from natural language processing, such as sites of disease, outperform those based on genomic data or stage alone as tested by cross-validation and an external, multi-institution dataset. By annotating 705,241 radiology reports, MSK-CHORD also uncovers predictors of metastasis to specific organ sites, including a relationship between SETD2 mutation and lower metastatic potential in immunotherapy-treated lung adenocarcinoma corroborated in independent datasets. We demonstrate the feasibility of automated annotation from unstructured notes and its utility in predicting patient outcomes. The resulting data are provided as a public resource for real-world oncologic research.<br /> (© 2024. The Author(s).)

Details

Language :
English
ISSN :
1476-4687
Database :
MEDLINE
Journal :
Nature
Publication Type :
Academic Journal
Accession number :
39506116
Full Text :
https://doi.org/10.1038/s41586-024-08167-5