Artificial Intelligence Can Cut Costs While Maintaining Accuracy in Colorectal Cancer Genotyping

Rising cancer care costs impose financial burdens on health systems. Applying artificial intelligence to diagnostic algorithms may reduce testing costs and avoid wasteful therapy-related expenditures. To evaluate the financial and clinical impact of incorporating artificial intelligence-based determ...

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Main Authors: Alec J. Kacew, Garth W. Strohbehn, Loren Saulsberry, Neda Laiteerapong, Nicole A. Cipriani, Jakob N. Kather, Alexander T. Pearson
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-06-01
Series:Frontiers in Oncology
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fonc.2021.630953/full
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spelling doaj-f031b3c7ba4c4ed4b26196837b0579a82021-06-08T05:44:55ZengFrontiers Media S.A.Frontiers in Oncology2234-943X2021-06-011110.3389/fonc.2021.630953630953Artificial Intelligence Can Cut Costs While Maintaining Accuracy in Colorectal Cancer GenotypingAlec J. Kacew0Garth W. Strohbehn1Loren Saulsberry2Neda Laiteerapong3Nicole A. Cipriani4Jakob N. Kather5Alexander T. Pearson6Pritzker School of Medicine, University of Chicago, Chicago, IL, United StatesDepartment of Medicine, University of Chicago, Chicago, IL, United StatesDepartment of Public Health Sciences, University of Chicago, Chicago, IL, United StatesDepartment of Medicine, University of Chicago, Chicago, IL, United StatesDepartment of Pathology, University of Chicago, Chicago, IL, United StatesDepartment of Medicine, University Hospital Rheinisch-Westfälische Technische Hochschule (RWTH) Aachen, Aachen, GermanyDepartment of Medicine, University of Chicago, Chicago, IL, United StatesRising cancer care costs impose financial burdens on health systems. Applying artificial intelligence to diagnostic algorithms may reduce testing costs and avoid wasteful therapy-related expenditures. To evaluate the financial and clinical impact of incorporating artificial intelligence-based determination of mismatch repair/microsatellite instability status into the first-line metastatic colorectal carcinoma setting, we developed a deterministic model to compare eight testing strategies: A) next-generation sequencing alone, B) high-sensitivity polymerase chain reaction or immunohistochemistry panel alone, C) high-specificity panel alone, D) high-specificity artificial intelligence alone, E) high-sensitivity artificial intelligence followed by next generation sequencing, F) high-specificity artificial intelligence followed by next-generation sequencing, G) high-sensitivity artificial intelligence and high-sensitivity panel, and H) high-sensitivity artificial intelligence and high-specificity panel. We used a hypothetical, nationally representative, population-based sample of individuals receiving first-line treatment for de novo metastatic colorectal cancer (N = 32,549) in the United States. Model inputs were derived from secondary research (peer-reviewed literature and Medicare data). We estimated the population-level diagnostic costs and clinical implications for each testing strategy. The testing strategy that resulted in the greatest project cost savings (including testing and first-line drug cost) compared to next-generation sequencing alone in newly-diagnosed metastatic colorectal cancer was using high-sensitivity artificial intelligence followed by confirmatory high-specificity polymerase chain reaction or immunohistochemistry panel for patients testing negative by artificial intelligence ($400 million, 12.9%). The high-specificity artificial intelligence-only strategy resulted in the most favorable clinical impact, with 97% diagnostic accuracy in guiding genotype-directed treatment and average time to treatment initiation of less than one day. Artificial intelligence has the potential to reduce both time to treatment initiation and costs in the metastatic colorectal cancer setting without meaningfully sacrificing diagnostic accuracy. We expect the artificial intelligence value proposition to improve in coming years, with increasing diagnostic accuracy and decreasing costs of processing power. To extract maximal value from the technology, health systems should evaluate integrating diagnostic histopathologic artificial intelligence into institutional protocols, perhaps in place of other genotyping methodologies.https://www.frontiersin.org/articles/10.3389/fonc.2021.630953/fulldeep learningmicrosatellite instability (MSI)colorectal (colon) cancerfinancial implicationdigital biomarkerdigital pathology
collection DOAJ
language English
format Article
sources DOAJ
author Alec J. Kacew
Garth W. Strohbehn
Loren Saulsberry
Neda Laiteerapong
Nicole A. Cipriani
Jakob N. Kather
Alexander T. Pearson
spellingShingle Alec J. Kacew
Garth W. Strohbehn
Loren Saulsberry
Neda Laiteerapong
Nicole A. Cipriani
Jakob N. Kather
Alexander T. Pearson
Artificial Intelligence Can Cut Costs While Maintaining Accuracy in Colorectal Cancer Genotyping
Frontiers in Oncology
deep learning
microsatellite instability (MSI)
colorectal (colon) cancer
financial implication
digital biomarker
digital pathology
author_facet Alec J. Kacew
Garth W. Strohbehn
Loren Saulsberry
Neda Laiteerapong
Nicole A. Cipriani
Jakob N. Kather
Alexander T. Pearson
author_sort Alec J. Kacew
title Artificial Intelligence Can Cut Costs While Maintaining Accuracy in Colorectal Cancer Genotyping
title_short Artificial Intelligence Can Cut Costs While Maintaining Accuracy in Colorectal Cancer Genotyping
title_full Artificial Intelligence Can Cut Costs While Maintaining Accuracy in Colorectal Cancer Genotyping
title_fullStr Artificial Intelligence Can Cut Costs While Maintaining Accuracy in Colorectal Cancer Genotyping
title_full_unstemmed Artificial Intelligence Can Cut Costs While Maintaining Accuracy in Colorectal Cancer Genotyping
title_sort artificial intelligence can cut costs while maintaining accuracy in colorectal cancer genotyping
publisher Frontiers Media S.A.
series Frontiers in Oncology
issn 2234-943X
publishDate 2021-06-01
description Rising cancer care costs impose financial burdens on health systems. Applying artificial intelligence to diagnostic algorithms may reduce testing costs and avoid wasteful therapy-related expenditures. To evaluate the financial and clinical impact of incorporating artificial intelligence-based determination of mismatch repair/microsatellite instability status into the first-line metastatic colorectal carcinoma setting, we developed a deterministic model to compare eight testing strategies: A) next-generation sequencing alone, B) high-sensitivity polymerase chain reaction or immunohistochemistry panel alone, C) high-specificity panel alone, D) high-specificity artificial intelligence alone, E) high-sensitivity artificial intelligence followed by next generation sequencing, F) high-specificity artificial intelligence followed by next-generation sequencing, G) high-sensitivity artificial intelligence and high-sensitivity panel, and H) high-sensitivity artificial intelligence and high-specificity panel. We used a hypothetical, nationally representative, population-based sample of individuals receiving first-line treatment for de novo metastatic colorectal cancer (N = 32,549) in the United States. Model inputs were derived from secondary research (peer-reviewed literature and Medicare data). We estimated the population-level diagnostic costs and clinical implications for each testing strategy. The testing strategy that resulted in the greatest project cost savings (including testing and first-line drug cost) compared to next-generation sequencing alone in newly-diagnosed metastatic colorectal cancer was using high-sensitivity artificial intelligence followed by confirmatory high-specificity polymerase chain reaction or immunohistochemistry panel for patients testing negative by artificial intelligence ($400 million, 12.9%). The high-specificity artificial intelligence-only strategy resulted in the most favorable clinical impact, with 97% diagnostic accuracy in guiding genotype-directed treatment and average time to treatment initiation of less than one day. Artificial intelligence has the potential to reduce both time to treatment initiation and costs in the metastatic colorectal cancer setting without meaningfully sacrificing diagnostic accuracy. We expect the artificial intelligence value proposition to improve in coming years, with increasing diagnostic accuracy and decreasing costs of processing power. To extract maximal value from the technology, health systems should evaluate integrating diagnostic histopathologic artificial intelligence into institutional protocols, perhaps in place of other genotyping methodologies.
topic deep learning
microsatellite instability (MSI)
colorectal (colon) cancer
financial implication
digital biomarker
digital pathology
url https://www.frontiersin.org/articles/10.3389/fonc.2021.630953/full
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