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Assessment of the current and emerging criteria for the histopathological classification of lung neuroendocrine tumours in the lungNENomics project.

Authors :
Mathian É
Drouet Y
Sexton-Oates A
Papotti MG
Pelosi G
Vignaud JM
Brcic L
Mansuet-Lupo A
Damiola F
Altun C
Berthet JP
Fournier CB
Brustugun OT
Centonze G
Chalabreysse L
de Montpréville VT
di Micco CM
Fadel E
Gadot N
Graziano P
Hofman P
Hofman V
Lacomme S
Lund-Iversen M
Mangiante L
Milione M
Muscarella LA
Perrin C
Planchard G
Popper H
Rousseau N
Roz L
Sabella G
Tabone-Eglinger S
Voegele C
Volante M
Walter T
Dingemans AM
Moonen L
Speel EJ
Derks J
Girard N
Chen L
Alcala N
Fernandez-Cuesta L
Lantuejoul S
Foll M
Source :
ESMO open [ESMO Open] 2024 Jun; Vol. 9 (6), pp. 103591. Date of Electronic Publication: 2024 Jun 14.
Publication Year :
2024

Abstract

Background: Six thoracic pathologists reviewed 259 lung neuroendocrine tumours (LNETs) from the lungNENomics project, with 171 of them having associated survival data. This cohort presents a unique opportunity to assess the strengths and limitations of current World Health Organization (WHO) classification criteria and to evaluate the utility of emerging markers.<br />Patients and Methods: Patients were diagnosed based on the 2021 WHO criteria, with atypical carcinoids (ACs) defined by the presence of focal necrosis and/or 2-10 mitoses per 2 mm <superscript>2</superscript> . We investigated two markers of tumour proliferation: the Ki-67 index and phospho-histone H3 (PHH3) protein expression, quantified by pathologists and automatically via deep learning. Additionally, an unsupervised deep learning algorithm was trained to uncover previously unnoticed morphological features with diagnostic value.<br />Results: The accuracy in distinguishing typical from ACs is hampered by interobserver variability in mitotic counting and the limitations of morphological criteria in identifying aggressive cases. Our study reveals that different Ki-67 cut-offs can categorise LNETs similarly to current WHO criteria. Counting mitoses in PHH3+ areas does not improve diagnosis, while providing a similar prognostic value to the current criteria. With the advantage of being time efficient, automated assessment of these markers leads to similar conclusions. Lastly, state-of-the-art deep learning modelling does not uncover undisclosed morphological features with diagnostic value.<br />Conclusions: This study suggests that the mitotic criteria can be complemented by manual or automated assessment of Ki-67 or PHH3 protein expression, but these markers do not significantly improve the prognostic value of the current classification, as the AC group remains highly unspecific for aggressive cases. Therefore, we may have exhausted the potential of morphological features in classifying and prognosticating LNETs. Our study suggests that it might be time to shift the research focus towards investigating molecular markers that could contribute to a more clinically relevant morpho-molecular classification.<br />Competing Interests: Disclosure Where authors are identified as personnel of the International Agency for Research on Cancer/WHO, the authors alone are responsible for the views expressed in this article and they do not necessarily represent the decisions, policy, or views of the International Agency for Research on Cancer/WHO. The rest of the authors declare no conflict of interest.<br /> (Copyright © 2024 World Health Organization. Published by Elsevier Ltd.. All rights reserved.)

Details

Language :
English
ISSN :
2059-7029
Volume :
9
Issue :
6
Database :
MEDLINE
Journal :
ESMO open
Publication Type :
Academic Journal
Accession number :
38878324
Full Text :
https://doi.org/10.1016/j.esmoop.2024.103591