Abstract

BackgroundPositron Emission Tomography (PET) is increasingly utilized in radiomics studies for treatment evaluation purposes. Nevertheless, lesion volume identification in PET images is a critical and still challenging step in the process of radiomics, due to the low spatial resolution and high noise level of PET images. Currently, the biological target volume (BTV) is manually contoured by nuclear physicians, with a time expensive and operator-dependent procedure.This study aims to obtain BTVs from cerebral metastases in patients who underwent L-[11C]methionine (11C-MET) PET, using a fully automatic procedure and to use these BTVs to extract radiomics features to stratify between patients who respond to treatment or not. For these purposes, 31 brain metastases, for predictive evaluation, and 25 ones, for follow-up evaluation after treatment, were delineated using the proposed method. Successively, 11C-MET PET studies and related volumetric segmentations were used to extract 108 features to investigate the potential application of radiomics analysis in patients with brain metastases. A novel statistical system has been implemented for feature reduction and selection, while discriminant analysis was used as a method for feature classification.ResultsFor predictive evaluation, 3 features (asphericity, low-intensity run emphasis, and complexity) were able to discriminate between responder and non-responder patients, after feature reduction and selection. Best performance in patient discrimination was obtained using the combination of the three selected features (sensitivity 81.23%, specificity 73.97%, and accuracy 78.27%) compared to the use of all features. Secondly, for follow-up evaluation, 8 features (SUVmean, SULpeak, SUVmin, SULpeak prod-surface-area, SUVmean prod-sphericity, surface mean SUV 3, SULpeak prod-sphericity, and second angular moment) were selected with optimal performance in discriminant analysis classification (sensitivity 86.28%, specificity 87.75%, and accuracy 86.57%) outperforming the use of all features.ConclusionsThe proposed system is able i) to extract 108 features for each automatically segmented lesion and ii) to select a sub-panel of 11C-MET PET features (3 and 8 in the case of predictive and follow-up evaluation), with valuable association with patient outcome. We believe that our model can be useful to improve treatment response and prognosis evaluation, potentially allowing the personalization of cancer treatment plans.

Highlights

  • Positron Emission Tomography (PET) is increasingly utilized in radiomics studies for treatment evaluation purposes

  • We believe that our model can be useful to improve treatment response and prognosis evaluation, potentially allowing the personalization of cancer treatment plans

  • PET may be an excellent alternative to magnetic resonance imaging (MRI) or computed tomography (CT) in detecting unknown primary tumour thanks to high sensitivity for the detection of lesions [9]

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Summary

Introduction

Positron Emission Tomography (PET) is increasingly utilized in radiomics studies for treatment evaluation purposes. A precise tumour delineation, the process of defining the extent of the lesion in the image separating high uptake regions from background avoiding false-positives, is needed to avoid distortions in data extraction This is a critical and still challenging issue due to the low spatial resolution and high noise level of PET images where boundaries between tissues are not always clearly defined [11]. A partial explanation for this high variability may be related to the partial volume effect [13]; lesion boundaries become blurred and unclear, making manual segmentation more challenging This is an important limitation of several radiomics studies, i.e. In follow-up examinations (i.e. after radiotherapy or neoadjuvant chemotherapy), segmentation is challenging due to reduced metabolic uptake, lesion to background ratio and reduced tumour volume

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