Texture Analysis in [18F]-Fluciclovine PET/CT Aids to Detect Prostate Cancer Biochemical Relapse: Report of a Preliminary Experience

Author:

Travascio Laura1ORCID,De Novellis Sara2,Turano Piera2,Di Nicola Angelo Domenico1,Di Egidio Vincenzo3,Calabria Ferdinando4,Frontino Luca1,Frantellizzi Viviana5ORCID,De Vincentis Giuseppe5ORCID,Cimini Andrea6ORCID,Ricci Maria7ORCID

Affiliation:

1. Nuclear Medicine Operative Unit, Santo Spirito Hospital, 65100 Pescara, Italy

2. Medical Physics Operative Unit, Santo Spirito Hospital, 65100 Pescara, Italy

3. Radiology Operative Unit, Santo Spirito Hospital, 65100 Pescara, Italy

4. Department of Nuclear Medicine and Theragnostics, Mariano Santo Hospital, 87100 Cosenza, Italy

5. Department of Radiological Sciences, Oncology and Anatomo-Pathology, Sapienza University of Rome, 00161 Rome, Italy

6. Nuclear Medicine Unit, St. Salvatore Hospital, 67100 L’Aquila, Italy

7. Nuclear Medicine Unit, Cardarelli Hospital, 86100 Campobasso, Italy

Abstract

Background. As artificial intelligence is expanding its applications in medicine, metabolic imaging is gaining the ability to retrieve data otherwise missed by even an experienced naked eye. Also, new radiopharmaceuticals and peptides aim to increase the specificity of positron emission tomography (PET) scans. Herein, a preliminary experience is reported regarding searching for a texture signature in routinely performed [F18]Fluciclovine imaging in prostate cancer. Materials and methods. Twenty-nine patients who underwent a PET/computed tomography (CT) scan with [18F]Fluciclovine because of biochemical prostate cancer relapse were retrospectively enrolled. First- and second-order radiomic features were manually extracted in lesions visually considered pathologic from the Local Image Features Extraction (LIFEx) platform. Statistical analysis was performed on a database of 29 lesions, one1 per patient. The dataset was split to have 20 lesions for the model training set and 9 lesions for the validation set. The Wilcoxon–Mann–Whitney test was used on the training set to select the most significant features (p-value < 0.05) predicting the dichotomous outcome in a univariate analysis. Results. The best model for predicting the outcome was found to be a multiple logistic linear regression model with two features as variables: an intensity histogram type and a gray-level size zone-based type. Conclusions. Texture analysis of [F18]Fluciclovine PET scans helps in defining prostate cancer relapse in a daily clinical setting.

Publisher

MDPI AG

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