Literature DB >> 30652606

Development of a Precise, Clinically Relevant, Digital Classification Schema for Cancer.

Andrew L Pecora1, Andrew D Norden1, John Hervey1, Eric V Schultz1, Thomas L Gallucci1, Elizabeth Rushforth1, Stuart L Goldberg1.   

Abstract

PURPOSE: Health care transactions depend on the efficiency of digital codes. The International Classification of Diseases and Related Health Problems (ICD) coding system, which is the most commonly used digital system, fails to capture the complexity of oncologic diseases. Because important prognostic information such as cancer stage and genomic markers are missing, the potential for ICD codes to define and compare patient cohorts is severely limited. A more precise, clinically relevant, digital classification schema that incorporates prognostic elements would address these needs.
METHODS: Working with cancer disease-specific experts, a new digital classification scheme, known as the Cota Nodal Address (CNA) system, was developed. The CNA has six components that define the disease of interest and incorporate all standard-of-care prognostic and predictive markers related to the particular cancer, including patient features.
RESULTS: Properly sorted into homogeneous groupings of patients with similar prognostic characteristics, the CNA system facilitated big data analytic approaches, such as evaluations of population health, identification of variation in treatment decisions, and the enablement of value-based payment models. The schema has been applied to patients with breast cancer at a large tertiary cancer care hospital and a regional community cancer care network and has facilitated the creation and application of value-based payment models.
CONCLUSION: The development and potential uses of a prognosis-based classification system are reviewed herein. Compared with ICD coding, the greater precision of the schema permits improved analyses of variance in treatment, outcomes, and costs in cancer care management.

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Year:  2018        PMID: 30652606     DOI: 10.1200/CCI.18.00006

Source DB:  PubMed          Journal:  JCO Clin Cancer Inform        ISSN: 2473-4276


  4 in total

Review 1.  Use of Real-World Evidence in US Payer Coverage Decision-Making for Next-Generation Sequencing-Based Tests: Challenges, Opportunities, and Potential Solutions.

Authors:  Patricia A Deverka; Michael P Douglas; Kathryn A Phillips
Journal:  Value Health       Date:  2020-03-26       Impact factor: 5.725

2.  Cancer Informatics in 2018: The Mysteries of the Cancer Genome Continue to Unravel, Deep Learning Approaches the Clinic, and Passive Data Collection Demonstrates Utility.

Authors:  Jeremy L Warner; Debra Patt
Journal:  Yearb Med Inform       Date:  2019-08-16

3.  The Oncology Data Network (ODN): A Collaborative European Data-Sharing Platform to Inform Cancer Care.

Authors:  David Kerr; Dirk Arnold; Jean-Yves Blay; Christian Buske; Alfredo Carrato; Winald Gerritsen; Marc Peeters
Journal:  Oncologist       Date:  2019-09-05

4.  Differential impact of cognitive computing augmented by real world evidence on novice and expert oncologists.

Authors:  Donna M McNamara; Stuart L Goldberg; Lisa Latts; Deena M Atieh Graham; Stanley E Waintraub; Andrew D Norden; Cody Landstrom; Andrew L Pecora; John Hervey; Eric V Schultz; Ching-Kun Wang; Nicholas Jungbluth; Phillip M Francis; Jane L Snowdon
Journal:  Cancer Med       Date:  2019-09-11       Impact factor: 4.452

  4 in total

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