Objectives: To predict tumor grade (G1 vs. G2/3), presence of distant metastasis (M+), metastatic lymph nodes (N+), and microvascular invasion (VI) of pancreatic neuroendocrine neoplasms (PanNEN) based on preoperative CT radiomic features (RFs), by applying a machine learning approach aimed to limit overfit. Methods: This retrospective study included 101 patients who underwent surgery for PanNEN; the entire population was split into training (n = 70) and validation cohort (n = 31). Based on a previously validated methodology, after tumor segmentation on contrast-enhanced CT, RFs were extracted from unenhanced CT images. In addition, conventional radiological and clinical features were combined with RFs into multivariate logistic regression models using minimum redundancy and a bootstrap-based machine learning approach. For each endpoint, models were trained and validated including only RFs (RF_model), and both (radiomic and clinicoradiological) features (COMB_model). Results: Twenty-five patients had G2/G3 tumor, 37 N+, and 14 M+ and 38 were shown to have VI. From a total of 182 RFs initially extracted, few independent radiomic and clinicoradiological features were identified. For M+ and G, the resulting models showed moderate to high performances: areas under the curve (AUC) for training/validation cohorts were 0.85/0.77 (RF_model) and 0.81/0.81 (COMB_model) for M+ and 0.67/0.72 and 0.68/0.70 for G. Concerning N+ and VI, only the COMB_model could be built, with poorer performance for N+ (AUC = 0.72/0.61) compared to VI (0.82/0.75). For all endpoints, the negative predictive value was good (≥ 0.75). Conclusions: Combining few radiomic and clinicoradiological features resulted in presurgical prediction of histological characteristics of PanNENs. Despite the limited risk of overfit, external validations are warranted. Key Points: • Histology is the only tool currently available allowing characterization of PanNEN biological characteristics important for prognostic assessment; significant limitations to this approach exist. • Based upon preoperative contrast-enhanced CT images, a machine learning approach optimized to favor models’ generalizability was successfully applied to train predictive models for tumor grading (G1 vs. G2/3), microvascular invasion, metastatic lymph nodes, and distant metastatic spread. • Moderate to high discriminative models (AUC: 0.67–0.85) based on few parameters (≤ 3) showing high negative predictive value (0.75–0.98) were generated and then successfully validated.

Prediction of the characteristics of aggressiveness of pancreatic neuroendocrine neoplasms (PanNENs) based on CT radiomic features / M. Mori, D. Palumbo, F. Muffatti, S. Partelli, J. Mushtaq, V. Andreasi, F. Prato, M.G. Ubeira, G. Palazzo, M. Falconi, C. Fiorino, F. De Cobelli. - In: EUROPEAN RADIOLOGY. - ISSN 0938-7994. - 33:6(2023), pp. 4412-4421. [10.1007/s00330-022-09351-9]

Prediction of the characteristics of aggressiveness of pancreatic neuroendocrine neoplasms (PanNENs) based on CT radiomic features

M. Mori
Primo
Formal Analysis
;
2023

Abstract

Objectives: To predict tumor grade (G1 vs. G2/3), presence of distant metastasis (M+), metastatic lymph nodes (N+), and microvascular invasion (VI) of pancreatic neuroendocrine neoplasms (PanNEN) based on preoperative CT radiomic features (RFs), by applying a machine learning approach aimed to limit overfit. Methods: This retrospective study included 101 patients who underwent surgery for PanNEN; the entire population was split into training (n = 70) and validation cohort (n = 31). Based on a previously validated methodology, after tumor segmentation on contrast-enhanced CT, RFs were extracted from unenhanced CT images. In addition, conventional radiological and clinical features were combined with RFs into multivariate logistic regression models using minimum redundancy and a bootstrap-based machine learning approach. For each endpoint, models were trained and validated including only RFs (RF_model), and both (radiomic and clinicoradiological) features (COMB_model). Results: Twenty-five patients had G2/G3 tumor, 37 N+, and 14 M+ and 38 were shown to have VI. From a total of 182 RFs initially extracted, few independent radiomic and clinicoradiological features were identified. For M+ and G, the resulting models showed moderate to high performances: areas under the curve (AUC) for training/validation cohorts were 0.85/0.77 (RF_model) and 0.81/0.81 (COMB_model) for M+ and 0.67/0.72 and 0.68/0.70 for G. Concerning N+ and VI, only the COMB_model could be built, with poorer performance for N+ (AUC = 0.72/0.61) compared to VI (0.82/0.75). For all endpoints, the negative predictive value was good (≥ 0.75). Conclusions: Combining few radiomic and clinicoradiological features resulted in presurgical prediction of histological characteristics of PanNENs. Despite the limited risk of overfit, external validations are warranted. Key Points: • Histology is the only tool currently available allowing characterization of PanNEN biological characteristics important for prognostic assessment; significant limitations to this approach exist. • Based upon preoperative contrast-enhanced CT images, a machine learning approach optimized to favor models’ generalizability was successfully applied to train predictive models for tumor grading (G1 vs. G2/3), microvascular invasion, metastatic lymph nodes, and distant metastatic spread. • Moderate to high discriminative models (AUC: 0.67–0.85) based on few parameters (≤ 3) showing high negative predictive value (0.75–0.98) were generated and then successfully validated.
No
English
Computer tomography; Neuroendocrine tumors; Pancreatic neoplasm; Predictive models; Radiomics
Settore FIS/07 - Fisica Applicata(Beni Culturali, Ambientali, Biol.e Medicin)
Articolo
Esperti anonimi
Pubblicazione scientifica
Goal 3: Good health and well-being
2023
Springer
33
6
4412
4421
10
Pubblicato
Periodico con rilevanza internazionale
scopus
Aderisco
info:eu-repo/semantics/article
Prediction of the characteristics of aggressiveness of pancreatic neuroendocrine neoplasms (PanNENs) based on CT radiomic features / M. Mori, D. Palumbo, F. Muffatti, S. Partelli, J. Mushtaq, V. Andreasi, F. Prato, M.G. Ubeira, G. Palazzo, M. Falconi, C. Fiorino, F. De Cobelli. - In: EUROPEAN RADIOLOGY. - ISSN 0938-7994. - 33:6(2023), pp. 4412-4421. [10.1007/s00330-022-09351-9]
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Prodotti della ricerca::01 - Articolo su periodico
12
262
Article (author)
Periodico con Impact Factor
M. Mori, D. Palumbo, F. Muffatti, S. Partelli, J. Mushtaq, V. Andreasi, F. Prato, M.G. Ubeira, G. Palazzo, M. Falconi, C. Fiorino, F. De Cobelli
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1033216
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