2023
DOI: 10.1101/2023.03.02.23286716
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Examining Longitudinal Markers of Bladder Cancer Recurrence Through a Semi-Autonomous Machine Learning System for Quantifying Specimen Atypia from Urine Cytology

Abstract: Urine cytology (UC) is generally considered the primary approach for screening for recurrence of bladder cancer. However, it is currently unclear how best to use cytological exams themselves for the assessment and early detection of recurrence, beyond identifying a positive finding which requires more invasive methods to confirm recurrence and decide on therapeutic options. As screening programs are frequent, and can be burdensome, finding quantitative means to reduce this burden for patients, cytopathologists… Show more

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“…Furthermore, identifying ways to stratify patients based on risk is crucial for improving quality of life and for early detection of recurrence or progression. 16 In many cytology laboratories, urine samples are processed using a liquid-based cytology technique that standardizes the process and facilitates screening. Manual examination of slides is labourintensive, lengthy, tedious and expensive.…”
Section: Introductionmentioning
confidence: 99%
“…Furthermore, identifying ways to stratify patients based on risk is crucial for improving quality of life and for early detection of recurrence or progression. 16 In many cytology laboratories, urine samples are processed using a liquid-based cytology technique that standardizes the process and facilitates screening. Manual examination of slides is labourintensive, lengthy, tedious and expensive.…”
Section: Introductionmentioning
confidence: 99%