Current status of machine learning in thyroid cytopathology Review


Authors: Wong, C. M.; Kezlarian, B. E.; Lin, O.
Review Title: Current status of machine learning in thyroid cytopathology
Abstract: The implementation of Digital Pathology has allowed the development of computational Pathology. Digital image-based applications that have received FDA Breakthrough Device Designation have been primarily focused on tissue specimens. The development of Artificial Intelligence-assisted algorithms using Cytology digital images has been much more limited due to technical challenges and a lack of optimized scanners for Cytology specimens. Despite the challenges in scanning whole slide images of cytology specimens, there have been many studies evaluating CP to create decision-support tools in Cytopathology. Among different Cytology specimens, thyroid fine needle aspiration biopsy (FNAB) specimens have one of the greatest potentials to benefit from machine learning algorithms (MLA) derived from digital images. Several authors have evaluated different machine learning algorithms focused on thyroid cytology in the past few years. The results are promising. The algorithms have mostly shown increased accuracy in the diagnosis and classification of thyroid cytology specimens. They have brought new insights and demonstrated the potential for improving future cytopathology workflow efficiency and accuracy. However, many issues still need to be addressed to further build on and improve current MLA models and their applications. To optimally train and validate MLA for thyroid cytology specimens, larger datasets obtained from multiple institutions are needed. MLAs hold great potential in improving thyroid cancer diagnostic speed and accuracy that will lead to improvements in patient management. © 2023 The Authors
Keywords: cytology; thyroid; digital pathology; machine learning algorithms; computational pathology
Journal Title: Journal of Pathology Informatics
Volume: 14
ISSN: 2229-5089
Publisher: Wolters Kluwer - Medknow  
Date Published: 2023-01-01
Start Page: 100309
Language: English
DOI: 10.1016/j.jpi.2023.100309
PROVIDER: scopus
PMCID: PMC10106504
PUBMED: 37077698
DOI/URL:
Notes: Review -- MSK Cancer Center Support Grant (P30 CA008748) acknowledged in PDF -- MSK corresponding author is Oscar Lin -- Export Date: 1 May 2023 -- Source: Scopus
Altmetric
Citation Impact
BMJ Impact Analytics
MSK Authors
  1. Oscar Lin
    310 Lin
  2. Charles Wong
    3 Wong