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. 2022 Jun;80(7):1121-1127.
doi: 10.1111/his.14659. Epub 2022 May 11.

The future of artificial intelligence in digital pathology - results of a survey across stakeholder groups

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The future of artificial intelligence in digital pathology - results of a survey across stakeholder groups

Céline N Heinz et al. Histopathology. 2022 Jun.

Abstract

Aims: Artificial intelligence (AI) provides a powerful tool to extract information from digitised histopathology whole slide images. During the last 5 years, academic and commercial actors have developed new technical solutions for a diverse set of tasks, including tissue segmentation, cell detection, mutation prediction, prognostication and prediction of treatment response. In the light of limited overall resources, it is presently unclear for researchers, practitioners and policymakers which of these topics are stable enough for clinical use in the near future and which topics are still experimental, but worth investing time and effort into.

Methods and results: To identify potentially promising applications of AI in pathology, we performed an anonymous online survey of 75 computational pathology domain experts from academia and industry. Participants enrolled in 2021 were queried about their subjective opinion on promising and appealing subfields of computational pathology with a focus upon solid tumours. The results of this survey indicate that the prediction of treatment response directly from routine pathology slides is regarded as the most promising future application. This item was ranked highest in the overall analysis and in subgroups by age and professional background. Furthermore, prediction of genetic alterations, gene expression and survival directly from routine pathology images scored consistently high throughout subgroups.

Conclusions: Together, these data demonstrate a possible direction for the development of computational pathology systems in clinical, academic and industrial research in the near future.

Keywords: artificial intelligence; digital pathology; survey.

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References

    1. Hanna Matthew G, Reuter Victor E, Hameed Meera R et al. Whole slide imaging equivalency and efficiency study: experience at a large academic center. Mod. Pathol. 2019; 32; 916-928. https://doi.org/10.1038/s41379-019-0205-0.
    1. Vodovnik A. Diagnostic time in digital pathology: a comparative study on 400 cases. J. Pathol. Inform. 2016; 7; 4. https://doi.org/10.4103/2153-3539.175377.
    1. Pantanowitz L, Sinard John H, Henricks Walter H et al. validating whole slide imaging for diagnostic purposes in pathology: guideline from the College of American Pathologists Pathology and Laboratory Quality Center. Arch. Pathol. Lab. Med. 2013; 137; 1710-1722. https://doi.org/10.5858/arpa.2013-0093-cp.
    1. Echle A, Timon RN, Josef BT, Tom L, Thomas PA, Nikolas KJ. Deep learning in cancer pathology: a new generation of clinical biomarkers. Br. J. Cancer 2021; 124; 686-696. https://doi.org/10.1038/s41416-020-01122-x.
    1. Nam D, Chapiro J, Paradis V, Seraphin TP, Kather JN. Artificial intelligence in liver diseases: improving diagnostics, prognostics and response prediction. JHEP Rep. 2022; 4; 100443.

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