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Review
. 2024 Sep;35(5):634-641.
doi: 10.1111/cyt.13412. Epub 2024 Jun 18.

Computer-assisted urine cytology: Faster, cheaper, better?

Affiliations
Review

Computer-assisted urine cytology: Faster, cheaper, better?

Chiara Ciaparrone et al. Cytopathology. 2024 Sep.

Abstract

Recent advancements in computer-assisted diagnosis (CAD) have catalysed significant progress in pathology, particularly in the realm of urine cytopathology. This review synthesizes the latest developments and challenges in CAD for diagnosing urothelial carcinomas, addressing the limitations of traditional urinary cytology. Through a literature review, we identify and analyse CAD models and algorithms developed for urine cytopathology, highlighting their methodologies and performance metrics. We discuss the potential of CAD to improve diagnostic accuracy, efficiency and patient outcomes, emphasizing its role in streamlining workflow and reducing errors. Furthermore, CAD tools have shown potential in exploring pathological conditions, uncovering novel biomarkers and prognostic/predictive features previously unknown or unseen. Finally, we examine the practical issues surrounding the integration of CAD into clinical practice, including regulatory approval, validation and training for pathologists. Despite the promising results, challenges remain, necessitating further research and validation efforts. Overall, CAD presents a transformative opportunity to revolutionize diagnostic practices in urine cytopathology, paving the way for enhanced patient care and outcomes.

Keywords: artificial intelligence; bladder cancer; computational pathology; deep learning; digital pathology.

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References

REFERENCES

    1. Kim D, Sundling KE, Virk R, et al. Digital cytology part 1: digital cytology implementation for practice: a concept paper with review and recommendations from the American Society of Cytopathology Digital Cytology Task Force. J Am Soc Cytopathol. 2024;13(2):86‐96. doi:10.1016/j.jasc.2023.11.006
    1. Rizzo PC, Caputo A, Maddalena E, et al. Digital pathology world tour. Digit Health. 2023;9:20552076231194551. doi:10.1177/20552076231194551
    1. Meroueh C, Chen ZE. Artificial intelligence in anatomical pathology: building a strong foundation for precision medicine. Hum Pathol. 2023;132:31‐38. doi:10.1016/j.humpath.2022.07.008
    1. Litjens G, Sánchez CI, Timofeeva N, et al. Deep learning as a tool for increased accuracy and efficiency of histopathological diagnosis. Sci Rep. 2016;6:26286. doi:10.1038/srep26286
    1. Caputo A, D'Antonio A. Digital pathology: the future is now. Indian J Pathol Microbiol. 2021;64(1):6‐7.

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