Purpose: The abundance and distribution of tumor-infiltrating lymphocytes (TILs) as well as that of other components of the tumor microenvironment is of particular importance for predicting response to immunotherapy in lung cancer (LC). We describe here a pilot study employing artificial intelligence (AI) in the assessment of TILs and other cell populations, intending to reduce the inter- or intra-observer variability that commonly characterizes this evaluation. Design: We developed a machine learning-based classifier to detect tumor, immune, and stromal cells on hematoxylin and eosin-stained sections, using the open-source framework QuPath. We evaluated the quantity of the aforementioned three cell populations among 37 LC whole slide images regions of interest, comparing the assessments made by five pathologists, both before and after using graphical predictions made by AI, for a total of 1110 quantitative measurements. Results: Our findings indicate noteworthy variations in score distribution among pathologists and between individual pathologists and AI. The AI-guided pathologist's evaluations resulted in reduction of significant discrepancies across pathologists: three comparisons showed a loss of significance (p > 0.05), whereas other four showed a reduction in significance (p > 0.01). Conclusions: We show that employing a machine learning approach in cell population quantification reduces inter- and intra-observer variability, improving reproducibility and facilitating its use in further validation studies. © 2024 The Authors

AI drives the assessment of lung cancer microenvironment composition / Gallo, Enzo; Guardiani, Davide; Betti, Martina; Ana Maria Arteni, Brindusa; Di Martino, Simona; Baldinelli, Sara; Daralioti, Theodora; Merenda, Elisabetta; Ascione, Andrea; Visca, Paolo; Pescarmona, Edoardo; Lavitrano, Marialuisa; Nisticò, Paola; Ciliberto, Gennaro; Pallocca, Matteo. - In: JOURNAL OF PATHOLOGY INFORMATICS. - ISSN 2153-3539. - 15:(2024). [10.1016/j.jpi.2024.100400]

AI drives the assessment of lung cancer microenvironment composition

Enzo Gallo
Primo
Supervision
;
Davide Guardiani
Secondo
;
Martina Betti;Sara Baldinelli;Theodora Daralioti
;
Elisabetta Merenda;Andrea Ascione;Paolo Visca;Edoardo Pescarmona;Marialuisa Lavitrano;Matteo Pallocca
2024

Abstract

Purpose: The abundance and distribution of tumor-infiltrating lymphocytes (TILs) as well as that of other components of the tumor microenvironment is of particular importance for predicting response to immunotherapy in lung cancer (LC). We describe here a pilot study employing artificial intelligence (AI) in the assessment of TILs and other cell populations, intending to reduce the inter- or intra-observer variability that commonly characterizes this evaluation. Design: We developed a machine learning-based classifier to detect tumor, immune, and stromal cells on hematoxylin and eosin-stained sections, using the open-source framework QuPath. We evaluated the quantity of the aforementioned three cell populations among 37 LC whole slide images regions of interest, comparing the assessments made by five pathologists, both before and after using graphical predictions made by AI, for a total of 1110 quantitative measurements. Results: Our findings indicate noteworthy variations in score distribution among pathologists and between individual pathologists and AI. The AI-guided pathologist's evaluations resulted in reduction of significant discrepancies across pathologists: three comparisons showed a loss of significance (p > 0.05), whereas other four showed a reduction in significance (p > 0.01). Conclusions: We show that employing a machine learning approach in cell population quantification reduces inter- and intra-observer variability, improving reproducibility and facilitating its use in further validation studies. © 2024 The Authors
2024
Computer-aided tool; Digital pathology; Lung cancer; Machine learning; NSCLC; Pathology image; QuPath; Tumor-infiltrating lymphocytes; Whole slide images
01 Pubblicazione su rivista::01a Articolo in rivista
AI drives the assessment of lung cancer microenvironment composition / Gallo, Enzo; Guardiani, Davide; Betti, Martina; Ana Maria Arteni, Brindusa; Di Martino, Simona; Baldinelli, Sara; Daralioti, Theodora; Merenda, Elisabetta; Ascione, Andrea; Visca, Paolo; Pescarmona, Edoardo; Lavitrano, Marialuisa; Nisticò, Paola; Ciliberto, Gennaro; Pallocca, Matteo. - In: JOURNAL OF PATHOLOGY INFORMATICS. - ISSN 2153-3539. - 15:(2024). [10.1016/j.jpi.2024.100400]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1748250
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