Examining longitudinal markers of bladder cancer recurrence through a semiautonomous machine learning system for quantifying specimen atypia from urine cytology

Author:

Levy Joshua J.1234ORCID,Chan Natt4,Marotti Jonathan D.15ORCID,Rodrigues Nathalie J.1,Ismail A. Aziz O.16,Kerr Darcy A.15ORCID,Gutmann Edward J.15ORCID,Glass Ryan E.7ORCID,Dodge Caroline P.8,Suriawinata Arief A.15,Christensen Brock C.3910,Liu Xiaoying15,Vaickus Louis J.15

Affiliation:

1. Emerging Diagnostic and Investigative Technologies Department of Pathology and Laboratory Medicine Dartmouth Hitchcock Medical Center Lebanon New Hampshire USA

2. Department of Dermatology Dartmouth Hitchcock Medical Center Lebanon New Hampshire USA

3. Department of Epidemiology Dartmouth College Geisel School of Medicine Hanover New Hampshire USA

4. Program in Quantitative Biomedical Sciences Dartmouth College Geisel School of Medicine Hanover New Hampshire USA

5. Dartmouth College Geisel School of Medicine Hanover New Hampshire USA

6. White River Junction VA Medical Center White River Junction Vermont USA

7. UPMC East Pittsburg Pennsylvania USA

8. Cambridge Health Alliance Cambridge Massachusetts USA

9. Department of Molecular and Systems Biology Dartmouth College Geisel School of Medicine Hanover New Hampshire USA

10. Department of Community and Family Medicine Dartmouth College Geisel School of Medicine Hanover New Hampshire USA

Abstract

AbstractBackgroundUrine cytology is generally considered the primary approach for screening for recurrence of bladder cancer. However, it is currently unclear how best to use cytological examinations for assessment and early detection of recurrence, beyond identifying a positive finding that requires more invasive methods to confirm recurrence and decide on therapeutic options. Because screening programs are frequent, and can be burdensome, finding quantitative means to reduce this burden for patients, cytopathologists, and urologists is an important endeavor and can improve both the efficiency and reliability of findings. Additionally, identifying ways to risk‐stratify patients is crucial for improving quality of life while reducing the risk of future recurrence or progression of the cancer.MethodsIn this study, a computational machine learning tool, AutoParis‐X, was leveraged to extract imaging features from urine cytology examinations longitudinally to study the predictive potential of urine cytology for assessing recurrence risk. This study examined how the significance of imaging predictors changes over time before and after surgery to determine which predictors and time periods are most relevant for assessing recurrence risk.ResultsResults indicate that imaging predictors extracted using AutoParis‐X can predict recurrence as well or better than traditional cytological/histological assessments alone and that the predictiveness of these features is variable across time, with key differences in overall specimen atypia identified immediately before tumor recurrence.ConclusionsFurther research will clarify how computational methods can be effectively used in high‐volume screening programs to improve recurrence detection and complement traditional modes of assessment.

Funder

National Institutes of Health

Publisher

Wiley

Subject

Cancer Research,Oncology

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