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Artificial Intelligence-Assisted Prostate Cancer Diagnosis for Reduced Use of Immunohistochemistry

31 March 2025
A. Blilie
N. Mulliqi
X. Ji
Kelvin Szolnoky
Sol Erika Boman
Matteo Titus
Geraldine Martinez Gonzalez
José Asenjo
Marcello Gambacorta
Paolo Libretti
Einar Gudlaugsson
S. R. Kjosavik
L. Egevad
E. Janssen
M. Eklund
K. Kartasalo
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Abstract

Prostate cancer diagnosis heavily relies on histopathological evaluation, which is subject to variability. While immunohistochemical staining (IHC) assists in distinguishing benign from malignant tissue, it involves increased work, higher costs, and diagnostic delays. Artificial intelligence (AI) presents a promising solution to reduce reliance on IHC by accurately classifying atypical glands and borderline morphologies in hematoxylin & eosin (H&E) stained tissue sections. In this study, we evaluated an AI model's ability to minimize IHC use without compromising diagnostic accuracy by retrospectively analyzing prostate core needle biopsies from routine diagnostics at three different pathology sites. These cohorts were composed exclusively of difficult cases where the diagnosing pathologists required IHC to finalize the diagnosis. The AI model demonstrated area under the curve values of 0.951-0.993 for detecting cancer in routine H&E-stained slides. Applying sensitivity-prioritized diagnostic thresholds reduced the need for IHC staining by 44.4%, 42.0%, and 20.7% in the three cohorts investigated, without a single false negative prediction. This AI model shows potential for optimizing IHC use, streamlining decision-making in prostate pathology, and alleviating resource burdens.

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@article{blilie2025_2504.00979,
  title={ Artificial Intelligence-Assisted Prostate Cancer Diagnosis for Reduced Use of Immunohistochemistry },
  author={ Anders Blilie and Nita Mulliqi and Xiaoyi Ji and Kelvin Szolnoky and Sol Erika Boman and Matteo Titus and Geraldine Martinez Gonzalez and José Asenjo and Marcello Gambacorta and Paolo Libretti and Einar Gudlaugsson and Svein R. Kjosavik and Lars Egevad and Emiel A.M. Janssen and Martin Eklund and Kimmo Kartasalo },
  journal={arXiv preprint arXiv:2504.00979},
  year={ 2025 }
}
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