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Dynamic Risk Profiling Using Serial Tumor Biomarkers for Personalized Outcome Prediction
Author(s) -
David M. Kurtz,
Mohammad Shahrokh Esfahani,
Florian Scherer,
Joanne Soo,
Michael C. Jin,
Chih Long Liu,
Aaron M. Newman,
Ulrich Dührsen,
Andreas Hüttmann,
Olivier Casasnovas,
Jason R. Westin,
Matthais Ritgen,
Sebastian Böttcher,
Anton W. Langerak,
Mark Roschewski,
Wyndham H. Wilson,
Gianluca Gaïdano,
Davide Rossi,
Jasmin Bahlo,
Michael Hallek,
Robert Tibshirani,
Maximilian Diehn,
Ash A. Alizadeh
Publication year - 2019
Publication title -
cell
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 26.304
H-Index - 776
eISSN - 1097-4172
pISSN - 0092-8674
DOI - 10.1016/j.cell.2019.06.011
Subject(s) - biology , outcome (game theory) , risk assessment , personalized medicine , profiling (computer programming) , oncology , precision medicine , machine learning , computational biology , bioinformatics , computer science , medicine , genetics , mathematics , computer security , mathematical economics , operating system
Accurate prediction of long-term outcomes remains a challenge in the care of cancer patients. Due to the difficulty of serial tumor sampling, previous prediction tools have focused on pretreatment factors. However, emerging non-invasive diagnostics have increased opportunities for serial tumor assessments. We describe the Continuous Individualized Risk Index (CIRI), a method to dynamically determine outcome probabilities for individual patients utilizing risk predictors acquired over time. Similar to "win probability" models in other fields, CIRI provides a real-time probability by integrating risk assessments throughout a patient's course. Applying CIRI to patients with diffuse large B cell lymphoma, we demonstrate improved outcome prediction compared to conventional risk models. We demonstrate CIRI's broader utility in analogous models of chronic lymphocytic leukemia and breast adenocarcinoma and perform a proof-of-concept analysis demonstrating how CIRI could be used to develop predictive biomarkers for therapy selection. We envision that dynamic risk assessment will facilitate personalized medicine and enable innovative therapeutic paradigms.

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