Literature DB >> 31816269

Clinical Decision Support for Ovarian Carcinoma Subtype Classification: A Pilot Observer Study With Pathology Trainees.

Marios A Gavrielides1, Meghan Miller1, Ian S Hagemann1, Heba Abdelal1, Zahra Alipour1, Jie-Fu Chen1, Behzad Salari1, Lulu Sun1, Huifang Zhou1, Jeffrey D Seidman1.   

Abstract

CONTEXT.—: Clinical decision support (CDS) systems could assist less experienced pathologists with certain diagnostic tasks for which subspecialty training or extensive experience is typically needed. The effect of decision support on pathologist performance for such diagnostic tasks has not been examined. OBJECTIVE.—: To examine the impact of a CDS tool for the classification of ovarian carcinoma subtypes by pathology trainees in a pilot observer study using digital pathology. DESIGN.—: Histologic review on 90 whole slide images from 75 ovarian cancer patients was conducted by 6 pathology residents using: (1) unaided review of whole slide images, and (2) aided review, where in addition to whole slide images observers used a CDS tool that provided information about the presence of 8 histologic features important for subtype classification that were identified previously by an expert in gynecologic pathology. The reference standard of ovarian subtype consisted of majority consensus from a panel of 3 gynecologic pathology experts. RESULTS.—: Aided review improved pairwise concordance with the reference standard for 5 of 6 observers by 3.3% to 17.8% (for 2 observers, increase was statistically significant) and mean interobserver agreement by 9.2% (not statistically significant). Observers benefited the most when the CDS tool prompted them to look for missed histologic features that were definitive for a certain subtype. Observer performance varied widely across cases with unanimous and nonunanimous reference classification, supporting the need for balancing data sets in terms of case difficulty. CONCLUSIONS.—: Findings showed the potential of CDS systems to close the knowledge gap between pathologists for complex diagnostic tasks.
© 2020 College of American Pathologists.

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Year:  2020        PMID: 31816269     DOI: 10.5858/arpa.2019-0390-OA

Source DB:  PubMed          Journal:  Arch Pathol Lab Med        ISSN: 0003-9985            Impact factor:   5.534


  2 in total

1.  Selection of Representative Histologic Slides in Interobserver Reproducibility Studies: Insights from Expert Review for Ovarian Carcinoma Subtype Classification.

Authors:  Marios A Gavrielides; Brigitte M Ronnett; Russell Vang; Fahime Sheikhzadeh; Jeffrey D Seidman
Journal:  J Pathol Inform       Date:  2021-03-22

2.  Evaluation of the Use of Combined Artificial Intelligence and Pathologist Assessment to Review and Grade Prostate Biopsies.

Authors:  David F Steiner; Kunal Nagpal; Rory Sayres; Davis J Foote; Benjamin D Wedin; Adam Pearce; Carrie J Cai; Samantha R Winter; Matthew Symonds; Liron Yatziv; Andrei Kapishnikov; Trissia Brown; Isabelle Flament-Auvigne; Fraser Tan; Martin C Stumpe; Pan-Pan Jiang; Yun Liu; Po-Hsuan Cameron Chen; Greg S Corrado; Michael Terry; Craig H Mermel
Journal:  JAMA Netw Open       Date:  2020-11-02
  2 in total

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