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RESEARCH PRODUCT
Texture analysis in susceptibility-weighted imaging may be useful to differentiate acute from chronic multiple sclerosis lesions.
Andrea De BarrosAlex RoviraAnnalaura SalernoRoberto CannellaCristina AugerG. CaruanaG. CaruanaGiuseppe SalvaggioLucas M. Pessinisubject
AdultMalemedicine.medical_specialtyAdolescentContrast Media030218 nuclear medicine & medical imagingLesion03 medical and health sciencesYoung Adult0302 clinical medicineMultiple Sclerosis Relapsing-RemittingImage Processing Computer-AssistedMedicineHumansMultiple sclerosiRadiology Nuclear Medicine and imagingDiagnosis Computer-AssistedLeast-Squares AnalysisNeuroradiologyAgedRetrospective Studiesmedicine.diagnostic_testReceiver operating characteristicbusiness.industryMultiple sclerosisUltrasoundReproducibility of ResultsMagnetic resonance imagingGeneral MedicineMiddle Agedmedicine.diseaseMagnetic Resonance ImagingRegressionLogistic modelsContrast agentROC Curve030220 oncology & carcinogenesisArea Under CurveSusceptibility weighted imagingAcute DiseaseChronic DiseaseRegression AnalysisFemaleRadiologymedicine.symptomSettore MED/36 - Diagnostica Per Immagini E Radioterapiabusinessdescription
To evaluate the diagnostic performance of texture analysis (TA) applied on non-contrast-enhanced susceptibility-weighted imaging (SWI) to differentiate acute (enhancing) from chronic (non-enhancing) multiple sclerosis (MS) lesions. We analyzed 175 lesions from 58 patients with relapsing-remitting MS imaged on a 3.0 T MRI scanner and applied TA on T2-w and SWI images to extract texture features. We evaluated the presence or absence of lesion enhancement on T1-w post-contrast images and performed a computational statistical analysis to assess if there was any significant correlation between the texture features and the presence of lesion activity. ROC curves and leave-one-out cross-validation were used to evaluate the performance of individual features and multiparametric models in the identification of active lesions. Multiple TA features obtained from SWI images showed a significantly different distribution in acute and chronic lesions (AUC, 0.617–0.720). Multiparametric predictive models based on logistic ridge regression and partial least squares regression yielded an AUC of 0.778 and 0.808, respectively. Results from T2-w images did not show any significant predictive ability of neither individual features nor multiparametric models. Texture analysis on SWI sequences may be useful to differentiate acute from chronic MS lesions. The good diagnostic performance could help to reduce the need of intravenous contrast agent administration in follow-up MRI studies. • Texture analysis applied on SWI sequences may be useful to differentiate acute from chronic multiple sclerosis lesions • The good diagnostic performance could help to minimize the need of intravenous contrast agent administration in follow-up MRI studies
year | journal | country | edition | language |
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2020-06-13 | European radiology |