Lung neuroendocrine neoplasms (lung NENs) are categorised by morphology, defining a classification sometimes unable to reflect ultimate clinical outcome. Subjectivity and poor reproducibility characterise diagnosis and prognosis assessment of all NENs. Here, we propose a machine learning framework for tumour prognosis assessment based on a quantitative, automated and repeatable evaluation of the spatial distribution of cells immunohistochemically positive for the proliferation marker Ki-67, performed on the entire extent of high-resolution whole slide images. Combining features from the fields of graph theory, fractality analysis, stochastic geometry and information theory, we describe the topology of replicating cells and predict prognosis in a histology-independent way. We demonstrate how our approach outperforms the well-recognised prognostic role of Ki-67 Labelling Index on a multi-centre dataset comprising the most controversial lung NENs. Moreover, we show that our system identifies arrangement patterns in the cells positive for Ki-67 that appear independently of tumour subtyping. Strikingly, the subset of these features whose presence is also independent of the value of the Labelling Index and the density of Ki-67-positive cells prove to be especially relevant in discerning prognostic classes. These findings disclose a possible path for the future of grading and classification of NENs.

Automated analysis of proliferating cells spatial organisation predicts prognosis in lung neuroendocrine neoplasms / Bulloni M.; Sandrini G.; Stacchiotti I.; Barberis M.; Calabrese F.; Carvalho L.; Fontanini G.; Ali G.; Fortarezza F.; Hofman P.; Hofman V.; Kern I.; Maiorano E.; Maragliano R.; Marchiori D.; Metovic J.; Papotti M.; Pezzuto F.; Pisa E.; Remmelink M.; Serio G.; Marzullo A.; Trabucco S.M.R.; Pennella A.; De Palma A.; Marulli G.; Fassina A.; Maffeis V.; Nesi G.; Naheed S.; Rea F.; Ottensmeier C.H.; Sessa F.; Uccella S.; Pelosi G.; Pattini L.. - In: CANCERS. - ISSN 2072-6694. - ELETTRONICO. - 13:(2021), pp. 4875-4875. [10.3390/cancers13194875]

Automated analysis of proliferating cells spatial organisation predicts prognosis in lung neuroendocrine neoplasms

Nesi G.;
2021

Abstract

Lung neuroendocrine neoplasms (lung NENs) are categorised by morphology, defining a classification sometimes unable to reflect ultimate clinical outcome. Subjectivity and poor reproducibility characterise diagnosis and prognosis assessment of all NENs. Here, we propose a machine learning framework for tumour prognosis assessment based on a quantitative, automated and repeatable evaluation of the spatial distribution of cells immunohistochemically positive for the proliferation marker Ki-67, performed on the entire extent of high-resolution whole slide images. Combining features from the fields of graph theory, fractality analysis, stochastic geometry and information theory, we describe the topology of replicating cells and predict prognosis in a histology-independent way. We demonstrate how our approach outperforms the well-recognised prognostic role of Ki-67 Labelling Index on a multi-centre dataset comprising the most controversial lung NENs. Moreover, we show that our system identifies arrangement patterns in the cells positive for Ki-67 that appear independently of tumour subtyping. Strikingly, the subset of these features whose presence is also independent of the value of the Labelling Index and the density of Ki-67-positive cells prove to be especially relevant in discerning prognostic classes. These findings disclose a possible path for the future of grading and classification of NENs.
2021
13
4875
4875
Bulloni M.; Sandrini G.; Stacchiotti I.; Barberis M.; Calabrese F.; Carvalho L.; Fontanini G.; Ali G.; Fortarezza F.; Hofman P.; Hofman V.; Kern I.; Maiorano E.; Maragliano R.; Marchiori D.; Metovic J.; Papotti M.; Pezzuto F.; Pisa E.; Remmelink M.; Serio G.; Marzullo A.; Trabucco S.M.R.; Pennella A.; De Palma A.; Marulli G.; Fassina A.; Maffeis V.; Nesi G.; Naheed S.; Rea F.; Ottensmeier C.H.; Sessa F.; Uccella S.; Pelosi G.; Pattini L.
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1258922
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