Wang, Yuan, Lami, Kris, Ahmad, Waleed, Schallenberg, Simon, Bychkov, Andrey, Ye, Yuanzi, Jonigk, Danny, Zhu, Xiaoya, Campelos, Sofia, Schultheis, Anne, Heldwein, Matthias ORCID: 0000-0002-2084-795X, Quaas, Alexander ORCID: 0000-0002-3537-6011, Ryska, Ales, Moreira, Andre L., Fukuoka, Junya, Büttner, Reinhard ORCID: 0000-0001-8806-4786 and Tolkach, Yuri ORCID: 0000-0001-5239-2841 (2025). AI Algorithm for Lung Adenocarcinoma Pattern Quantification (PATQUANT): International Validation and Advanced Risk Stratification Superior to Conventional Grading. MedComm, 6 (9). pp. 1-14. Wiley. ISSN 2688-2663

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Identification Number:10.1002/MCO2.70380

Abstract

[Artikel-Nr.: e70380] The morphological patterns of lung adenocarcinoma (LUAD) are recognized for their prognostic significance, with ongoing debate regarding the optimal grading strategy. This study aimed to develop a clinical‐grade, fully quantitative, and automated tool for pattern classification/quantification (PATQUANT), to evaluate existing grading strategies, and determine the optimal grading system. PATQUANT was trained on a high‐quality dataset, manually annotated by expert pathologists. Several independent test datasets and 13 expert pathologists were involved in validation. Five large, multinational cohorts of resectable LUAD (patient n = 1120) were analyzed concerning prognostic value. PATQUANT demonstrated excellent pattern segmentation/classification accuracy and outperformed 8 out of 13 pathologists. The prognostic study revealed a distinct prognostic profile for the complex glandular pattern. While all contemporary grading systems had prognostic value, the predominant pattern‐based and simplified IASLC systems were superior. We propose and validate two new, fully explainable grading principles, providing fine‐grained, statistically independent patient risk stratification. We developed a fully automated, robust AI tool for pattern analysis/quantification that surpasses the performance of experienced pathologists. Additionally, we demonstrate the excellent prognostic capabilities of two new grading approaches that outperform traditional grading methods. We make our extensive agreement dataset publicly available to advance the developments in the field.

Item Type: Article
Creators:
Creators
Email
ORCID
ORCID Put Code
Wang, Yuan
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Lami, Kris
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Ahmad, Waleed
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Schallenberg, Simon
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Bychkov, Andrey
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Ye, Yuanzi
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Jonigk, Danny
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Zhu, Xiaoya
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Campelos, Sofia
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Schultheis, Anne
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Heldwein, Matthias
UNSPECIFIED
UNSPECIFIED
Quaas, Alexander
UNSPECIFIED
UNSPECIFIED
Ryska, Ales
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Moreira, Andre L.
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Fukuoka, Junya
UNSPECIFIED
UNSPECIFIED
UNSPECIFIED
Büttner, Reinhard
UNSPECIFIED
UNSPECIFIED
Tolkach, Yuri
UNSPECIFIED
UNSPECIFIED
URN: urn:nbn:de:hbz:38-801683
Identification Number: 10.1002/MCO2.70380
Journal or Publication Title: MedComm
Volume: 6
Number: 9
Page Range: pp. 1-14
Number of Pages: 14
Date: 8 September 2025
Publisher: Wiley
ISSN: 2688-2663
Language: English
Faculty: Faculty of Medicine
Divisions: Faculty of Medicine > Chirurgie > Klinik und Poliklinik für Allgemein-, Viszeral-, Thorax- und Transplantationschirurgie
Faculty of Medicine > Pathologie und Neuropathologie > Institut für Pathologie
Subjects: Medical sciences Medicine
Uncontrolled Keywords:
Keywords
Language
AI ; grading ; lung adenocarcinoma ; lung cancer ; pattern ; PATQUANT
English
['eprint_fieldname_oa_funders' not defined]: Publikationsfonds UzK
Refereed: Yes
URI: http://kups.ub.uni-koeln.de/id/eprint/80168

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