Despite impressive results, almost 30% of NET do not respond to PRRT and no wellestablished criteria are suitable to predict response. Therefore, we assessed the predictive value of radiomics [68 Ga]DOTATOC PET/CT images pre-PRRT in metastatic GEP NET. We retrospectively analyzed the predictive value of radiomics in 324 SSTR-2-positive lesions from 38 metastatic GEP-NET patients (nine G1, 27 G2, and two G3) who underwent restaging [68 Ga]DOTATOC PET/CT before complete PRRT with [177 Lu]DOTATOC. Clinical, laboratory, and radiological follow-up data were collected for at least six months after the last cycle. Through LifeX, we extracted 65 PET features for each lesion. Grading, PRRT number of cycles, and cumulative activity, pre-and post-PRRT CgA values were also considered as additional clinical features. [68 Ga]DOTATOC PET/CT follow-up with the same scanner for each patient determined the disease status (progression vs. response in terms of stability/reduction/disappearance) for each lesion. All features (PET and clinical) were also correlated with follow-up data in a per-site analysis (liver, lymph nodes, and bone), and for features significantly associated with response, the ∆radiomics for each lesion was assessed on follow-up [68 Ga]DOTATOC PET/CT performed until nine months post-PRRT. A statistical system based on the point-biserial correlation and logistic regression analysis was used for the reduction and selection of the features. Discriminant analysis was used, instead, to obtain the predictive model using the k-fold strategy to split data into training and validation sets. From the reduction and selection process, HISTO_Skewness and HISTO_Kurtosis were able to predict response with an area under the receiver operating characteristics curve (AUC ROC), sensitivity, and specificity of 0.745, 80.6%, 67.2% and 0.722, 61.2%, 75.9%, respectively. Moreover, a combination of three features (HISTO_Skewness; HISTO_Kurtosis, and Grading) did not improve the AUC significantly with 0.744. SUVmax . However, it could not predict response to PRRT (p = 0.49, AUC 0.523). The presented preliminary “theragnomics” model proved to be superior to conventional quantitative parameters to predict the response of GEP-NET lesions in patients treated with complete [177 Lu]DOTATOC PRRT, regardless of the lesion site.

[68 Ga]DOTATOC PET/CT Radiomics to Predict the Response in GEP-NETs Undergoing [177 Lu]DOTATOC PRRT: The “Theragnomics” Concept

Liberini V.;Spataro A.;Croce L.;Baldari S.;Deandreis D.;Gaeta M.;Baldari S.
2022-01-01

Abstract

Despite impressive results, almost 30% of NET do not respond to PRRT and no wellestablished criteria are suitable to predict response. Therefore, we assessed the predictive value of radiomics [68 Ga]DOTATOC PET/CT images pre-PRRT in metastatic GEP NET. We retrospectively analyzed the predictive value of radiomics in 324 SSTR-2-positive lesions from 38 metastatic GEP-NET patients (nine G1, 27 G2, and two G3) who underwent restaging [68 Ga]DOTATOC PET/CT before complete PRRT with [177 Lu]DOTATOC. Clinical, laboratory, and radiological follow-up data were collected for at least six months after the last cycle. Through LifeX, we extracted 65 PET features for each lesion. Grading, PRRT number of cycles, and cumulative activity, pre-and post-PRRT CgA values were also considered as additional clinical features. [68 Ga]DOTATOC PET/CT follow-up with the same scanner for each patient determined the disease status (progression vs. response in terms of stability/reduction/disappearance) for each lesion. All features (PET and clinical) were also correlated with follow-up data in a per-site analysis (liver, lymph nodes, and bone), and for features significantly associated with response, the ∆radiomics for each lesion was assessed on follow-up [68 Ga]DOTATOC PET/CT performed until nine months post-PRRT. A statistical system based on the point-biserial correlation and logistic regression analysis was used for the reduction and selection of the features. Discriminant analysis was used, instead, to obtain the predictive model using the k-fold strategy to split data into training and validation sets. From the reduction and selection process, HISTO_Skewness and HISTO_Kurtosis were able to predict response with an area under the receiver operating characteristics curve (AUC ROC), sensitivity, and specificity of 0.745, 80.6%, 67.2% and 0.722, 61.2%, 75.9%, respectively. Moreover, a combination of three features (HISTO_Skewness; HISTO_Kurtosis, and Grading) did not improve the AUC significantly with 0.744. SUVmax . However, it could not predict response to PRRT (p = 0.49, AUC 0.523). The presented preliminary “theragnomics” model proved to be superior to conventional quantitative parameters to predict the response of GEP-NET lesions in patients treated with complete [177 Lu]DOTATOC PRRT, regardless of the lesion site.
2022
14
4
1
14
177; Lu; Artificial intelligence; Delta radiomics; GEP NET; Machine-learning; PRRT; [; 68; Ga]DOTATOC PET
Laudicella R.; Comelli A.; Liberini V.; Vento A.; Stefano A.; Spataro A.; Croce L.; Baldari S.; Bambaci M.; Deandreis D.; Arico' D.; Ippolito M.; Gaeta M.; Alongi P.; Minutoli F.; Burger I.A.; Baldari S.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1863822
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