Author
Listed:
- Manuel Tran
(Helmholtz Munich
Technical University of Munich)
- Paul Schmidle
(University of Freiburg)
- Ruifeng Ray Guo
(Mayo Clinic)
- Sophia J. Wagner
(Helmholtz Munich
Technical University of Munich)
- Valentin Koch
(Technical University of Munich
Helmholtz Munich)
- Valerio Lupperger
(MLL Munich Leukemia Laboratory)
- Brenna Novotny
(Mayo Clinic)
- Dennis H. Murphree
(Mayo Clinic)
- Heather D. Hardway
(Mayo Clinic)
- Marina D’Amato
(Radboud University Medical Center)
- Judith Lefkes
(Radboud University Medical Center
Oncode Institute)
- Daan J. Geijs
(Radboud University Medical Center
Oncode Institute)
- Annette Feuchtinger
(Helmholtz Munich)
- Alexander Böhner
(Technical University of Munich)
- Robert Kaczmarczyk
(Technical University of Munich)
- Tilo Biedermann
(Technical University of Munich)
- Avital L. Amir
(Radboud University Medical Center)
- Antien L. Mooyaart
(Erasmus University Medical Center)
- Francesco Ciompi
(Radboud University Medical Center)
- Geert Litjens
(Radboud University Medical Center
Oncode Institute)
- Chen Wang
(Mayo Clinic)
- Nneka I. Comfere
(Mayo Clinic
Mayo Clinic)
- Kilian Eyerich
(University of Freiburg)
- Stephan A. Braun
(University Hospital Münster
Heinrich-Heine University)
- Carsten Marr
(Helmholtz Munich
Helmholtz Munich)
- Tingying Peng
(Helmholtz Munich
Technical University of Munich)
Abstract
Histopathology is the reference standard for diagnosing the presence and nature of many diseases, including cancer. However, analyzing tissue samples under a microscope and summarizing the findings in a comprehensive pathology report is time-consuming, labor-intensive, and non-standardized. To address this problem, we present HistoGPT, a vision language model that generates pathology reports from a patient’s multiple full-resolution histology images. It is trained on 15,129 whole slide images from 6705 dermatology patients with corresponding pathology reports. The generated reports match the quality of human-written reports for common and homogeneous malignancies, as confirmed by natural language processing metrics and domain expert analysis. We evaluate HistoGPT in an international, multi-center clinical study and show that it can accurately predict tumor subtypes, tumor thickness, and tumor margins in a zero-shot fashion. Our model demonstrates the potential of artificial intelligence to assist pathologists in evaluating, reporting, and understanding routine dermatopathology cases.
Suggested Citation
Manuel Tran & Paul Schmidle & Ruifeng Ray Guo & Sophia J. Wagner & Valentin Koch & Valerio Lupperger & Brenna Novotny & Dennis H. Murphree & Heather D. Hardway & Marina D’Amato & Judith Lefkes & Daan , 2025.
"Generating dermatopathology reports from gigapixel whole slide images with HistoGPT,"
Nature Communications, Nature, vol. 16(1), pages 1-17, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-60014-x
DOI: 10.1038/s41467-025-60014-x
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