Artificial Intelligence-based Segmentation of Residual Pancreatic Cancer in Resection Specimens Following Neoadjuvant Treatment (ISGPP-2)

Author:

Janssen Boris V.123,Oteman Bart123,Ali Mahsoem34,Valkema Pieter A.23,Adsay Volkan5,Basturk Olca6,Chatterjee Deyali7,Chou Angela89,Crobach Stijn10,Doukas Michael11,Drillenburg Paul12,Esposito Irene13,Gill Anthony J.89,Hong Seung-Mo14,Jansen Casper1516,Kliffen Mike17,Mittal Anubhav18,Samra Jas918,van Velthuysen Marie-Louise F.11,Yavas Aslihan13,Kazemier Geert34,Verheij Joanne23,Steyerberg Ewout19,Besselink Marc G.13,Wang Huamin7,Verbeke Caroline2021,Fariña Arantza23,de Boer Onno J.23, ,

Affiliation:

1. Surgery

2. Pathology, Amsterdam UMC, location University of Amsterdam

3. Cancer Center Amsterdam

4. Department of Surgery, Amsterdam UMC, location Vrije Universiteit

5. Department of Pathology, Koc University and KUTTAM Research Center, Istanbul, Turkey

6. Department of Pathology, Memorial Sloan Kettering Cancer Center, New York, NY

7. Department of Anatomical Pathology, University of Texas MD Anderson Cancer Center, Houston, TX

8. Cancer Diagnosis and Pathology Group, Kolling Institute of Medical Research, Royal North Shore Hospital, St Leonards, NSW, Australia

9. University of Sydney, Sydney, NSW, Australia

10. Pathology

11. Department of Pathology, Erasmus Medical Center

12. Department of Pathology, OLVG, Amsterdam

13. Institute of Pathology, Heinrich-Heine-University and University Hospital of Duesseldorf, Duesseldorf, Germany

14. Department of Pathology, Asan Medical Center, Seoul, Republic of Korea

15. Laboratorium Pathologie Oost-Nederland, Hengelo

16. Department of Pathology, Medisch Spectrum Twente, Enschede, The Netherlands

17. Department of Pathology, Maasstad ziekenhuis, Rotterdam

18. Department of Surgery of Medical Research, Royal North Shore Hospital, St Leonards, NSW, Australia

19. Biomedical Data Sciences, Leiden University Medical Center, Leiden

20. Department of Pathology, Institute of Clinical Medicine, University of Oslo

21. Department of Pathology, Oslo University Hospital, Oslo, Norway

Abstract

Neoadjuvant therapy (NAT) has become routine in patients with borderline resectable pancreatic cancer. Pathologists examine pancreatic cancer resection specimens to evaluate the effect of NAT. However, an automated scoring system to objectively quantify residual pancreatic cancer (RPC) is currently lacking. Herein, we developed and validated the first automated segmentation model using artificial intelligence techniques to objectively quantify RPC. Digitized histopathological tissue slides were included from resected pancreatic cancer specimens from 14 centers in 7 countries in Europe, North America, Australia, and Asia. Four different scanner types were used: Philips (56%), Hamamatsu (27%), 3DHistech (10%), and Leica (7%). Regions of interest were annotated and classified as cancer, non-neoplastic pancreatic ducts, and others. A U-Net model was trained to detect RPC. Validation consisted of by-scanner internal-external cross-validation. Overall, 528 unique hematoxylin and eosin (H & E) slides from 528 patients were included. In the individual Philips, Hamamatsu, 3DHistech, and Leica scanner cross-validations, mean F1 scores of 0.81 (95% CI, 0.77-0.84), 0.80 (0.78-0.83), 0.76 (0.65-0.78), and 0.71 (0.65-0.78) were achieved, respectively. In the meta-analysis of the cross-validations, the mean F1 score was 0.78 (0.71-0.84). A final model was trained on the entire data set. This ISGPP model is the first segmentation model using artificial intelligence techniques to objectively quantify RPC following NAT. The internally-externally cross-validated model in this study demonstrated robust performance in detecting RPC in specimens. The ISGPP model, now made publically available, enables automated RPC segmentation and forms the basis for objective NAT response evaluation in pancreatic cancer.

Publisher

Ovid Technologies (Wolters Kluwer Health)

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