Abstract

BackgroundThis study aimed to explore the radiomic features from PET images to detect active cardiac sarcoidosis (CS).MethodsForty sarcoid patients and twenty-nine controls were scanned using FDG PET-CMR. Five feature classes were compared between the groups. From the PET images alone, two different segmentations were drawn. For segmentation A, a region of interest (ROI) was manually delineated for the patients' myocardium hot regions with standardized uptake value (SUV) higher than 2.5 and the controls' normal myocardium region. A second ROI was drawn in the entire left ventricular myocardium for both study groups, segmentation B. The conventional metrics and radiomic features were then extracted for each ROI. Mann-Whitney U-test and a logistic regression classifier were used to compare the individual features of the study groups.ResultsFor segmentation A, the SUVmin had the highest area under the curve (AUC) and greatest accuracy among the conventional metrics. However, for both segmentations, the AUC and accuracy of the TBRmax were relatively high, >0.85. Twenty-two (from segmentation A) and thirty-five (from segmentation B) of 75 radiomic features fulfilled the criteria: P-value < 0.00061 (after Bonferroni correction), AUC >0.5, and accuracy >0.7. Principal Component Analysis (PCA) was conducted, with five components leading to cumulative variance higher than 90%. Ten machine learning classifiers were then tested and trained. Most of them had AUCs and accuracies ≥0.8. For segmentation A, the AUCs and accuracies of all classifiers are >0.9, but k-neighbors and neural network classifiers were the highest (=1). For segmentation B, there are four classifiers with AUCs and accuracies ≥0.8. However, the gaussian process classifier indicated the highest AUC and accuracy (0.9 and 0.8, respectively).ConclusionsRadiomic analysis of the specific PET data was not proven to be necessary for the detection of CS. However, building an automated procedure will help to accelerate the analysis and potentially lead to more reproducible findings across different scanners and imaging centers and consequently improve standardization procedures that are important for clinical trials and development of more robust diagnostic protocols.

Highlights

  • Sarcoidosis is a multisystem, granulomatous inflammatory disease of unknown etiology, characterized by the presence of non-caseating granulomas in the involved organs [1, 2]

  • The results are relatively different by applying the Mann– Whitney U-tests on the conventional metrics of the different study groups for each segmentation separately

  • For segmentation A, the SUVmin had the highest area under the curve (AUC) and greatest accuracy due to specifying standardized uptake value (SUV) >2.5 as the minimum value for the patient group, while for segmentation B, the highest performance was for TBRmax. For both segmentations, the AUC and accuracy of the TBRmax were relatively high and had similar results regardless of the segmentation approach (AUC 0.96; accuracy 0.88–0.89 for segmentation A & B, respectively). This slight difference in TBRmax results between both segmentations came from the difference in the number of participants in the patient group who met the criteria for each segmentation

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Summary

Introduction

Sarcoidosis is a multisystem, granulomatous inflammatory disease of unknown etiology, characterized by the presence of non-caseating granulomas in the involved organs [1, 2]. The development of this disease in the pulmonary system has been identified in more than 90% of reported cases [3, 4]. It can affect the extrapulmonary organs as well, including the heart [5]. At least 25% of patients with sarcoidosis are diagnosed with cardiac involvement [6–8]. This study aimed to explore the radiomic features from PET images to detect active cardiac sarcoidosis (CS)

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