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Real-World Outcomes of an Automated Physician Support System for Genome-Driven Oncology
14
Zitationen
21
Autoren
2019
Jahr
Abstract
PURPOSE: Matching patients to investigational therapies requires new tools to support physician decision making. We designed and implemented Precision Insight Support Engine (PRECISE), an automated, just-in-time, clinical-grade informatics platform to identify and dynamically track patients on the basis of molecular and clinical criteria. Real-world use of this tool was analyzed to determine whether PRECISE facilitated enrollment to early-phase, genome-driven trials. MATERIALS AND METHODS: We analyzed patients who were enrolled in genome-driven, early-phase trials using PRECISE at Memorial Sloan Kettering Cancer Center between April 2014 and January 2018. Primary end point was the proportion of enrolled patients who were successfully identified using PRECISE before enrollment. Secondary end points included time from sequencing and PRECISE identification to enrollment. Reasons for a failure to identify genomically matched patients were also explored. RESULTS: (8.7%). Median time from sequencing to enrollment was 163 days (interquartile range, 66 to 357 days), and from PRECISE identification to enrollment 87 days (interquartile range, 37 to 180 days). Common reasons for failing to identify patients before enrollment included accrual on the basis of molecular alterations that did not match pre-established PRECISE genomic eligibility (140 [33%] of 428) and external sequencing not available for parsing (127 [30%] of 428). CONCLUSION: PRECISE identified 43% of all patients accrued to a diverse cohort of early-phase, genome-matched studies. Purpose-built informatics platforms represent a novel and potentially effective method for matching patients to molecularly selected studies.
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Autoren
- Jessica J. Tao
- Michael Eubank
- Alison M. Schram
- Nicholas A. Cangemi
- Erika G. Pamer
- Ezra Y. Rosen
- Nikolaus Schultz
- Debyani Chakravarty
- John Philip
- Jaclyn F. Hechtman
- James J. Harding
- Lillian M. Smyth
- Komal Jhaveri
- Alexander Drilon
- Marc Ladanyi
- David B. Solit
- Ahmet Zehir
- Michael F. Berger
- Peter D. Stetson
- Stuart M. Gardos
- David M. Hyman