Search results for "Radiomic"

showing 10 items of 54 documents

71P Role of radiomics in predicting molecular phenotypes of female breast cancer

2020

Oncologymedicine.medical_specialtyOncologyRadiomicsbusiness.industryInternal medicinemedicineHematologybusinessPhenotypeFemale breast cancerAnnals of Oncology
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55P Role of radiomics for predicting immunophenotypes in male breast cancer

2020

Oncologymedicine.medical_specialtyOncologyRadiomicsbusiness.industryMale breast cancerInternal medicinemedicineHematologymedicine.diseasebusinessAnnals of Oncology
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Imaging standardisation in metastatic colorectal cancer: a joint EORTC-ESOI-ESGAR expert consensus recommendation

2022

Background: Treatment monitoring in metastatic colorectal cancer (mCRC) relies on imaging to evaluate the tumor burden. Response Evaluation Criteria in Solid Tumors (RECIST) provide a framework on reporting and interpretation of imaging findings yet offer no guidance on a standardized imaging protocol tailored to mCRC patients. Imaging protocol heterogeneity remains a challenge for the reproducibility of conventional imaging endpoints and is an obstacle for research on novel imaging endpoints. Patients and methods: Acknowledging the recently highlighted potential of radiomics and artificial intelligence (AI) tools as decision support for patient care in mCRC, a multidisciplinary, internatio…

PROTOCOLCancer ResearchPositron emission tomographyArtificial intelligenceConsensusBEVACIZUMABMedizinImagingCancer -- ImagingHumansCRITERIAColon (Anatomy) -- Cancer -- TomographyComputed tomographyScience & TechnologyRadiomicsRectal NeoplasmsAbdomen -- Radiography -- Case studiesColon (Anatomy) -- Cancer -- TreatmentReproducibility of ResultsAbdomen -- Radiography -- StandardsOPEN-LABELColorectal cancerArtificial intelligence Standardisation Colorectal cancer Computed tomography Imaging Positron emission tomography RadiomicsOncologyColonic NeoplasmsSURVIVALStandardisationLife Sciences & Biomedicine
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Imaging of Substantia Nigra in Parkinson's Disease: A Narrative Review.

2021

Parkinson’s disease (PD) is a progressive neurodegenerative disorder, characterized by motor and non-motor symptoms due to the degeneration of the pars compacta of the substantia nigra (SNc) with dopaminergic denervation of the striatum. Although the diagnosis of PD is principally based on a clinical assessment, great efforts have been expended over the past two decades to evaluate reliable biomarkers for PD. Among these biomarkers, magnetic resonance imaging (MRI)-based biomarkers may play a key role. Conventional MRI sequences are considered by many in the field to have low sensitivity, while advanced pulse sequences and ultra-high-field MRI techniques have brought many advantages, partic…

Parkinson's diseaseSettore MED/50 - Scienze Tecniche Mediche ApplicateSubstantia nigraNeurosciences. Biological psychiatry. NeuropsychiatryDiseaseStriatumReview030218 nuclear medicine & medical imaging03 medical and health sciences0302 clinical medicineironneurodegenerative diseasemedicinemagnetic resonance imagingneurodegenerative diseasesmedicine.diagnostic_testPars compactabusiness.industryGeneral NeuroscienceradiomicSettore MED/37 - NeuroradiologiabiomarkersMagnetic resonance imagingmedicine.diseaseparkinsonian disordersnigrosome-1radiomicsParkinson’s diseasebiomarkerSettore MED/26 - NeurologiaDifferential diagnosisneuromelaninbusinessSettore MED/36 - Diagnostica Per Immagini E RadioterapiaNeuroscience030217 neurology & neurosurgeryDiffusion MRIRC321-571Brain sciences
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Identifying the primary site of origin of MRI brain metastases from lung and breast cancer following a 2D radiomics approach

2017

Detection of brain metastases in patients with undiagnosed primary cancer is unusual but still an existing phenomenon. In these cases, identifying the cancer site of origin is non-feasible by visual examination of magnetic resonance (MR) images. Recently, radiomics has been proposed to analyze differences among classes of visually imperceptible imaging characteristics. In this study we analyzed 46 T1-weighted MR images of brain metastases from 29 patients: 29 of lung and 17 of breast origin. A total of 43 radiomics texture features were extracted from the metastatic lesions. Support vector machine (SVM) and k-nearest neighbors (k-NN) classifiers were implemented to evaluate the classificati…

Pathologymedicine.medical_specialtyLungmedicine.diagnostic_testbusiness.industryFeature extractionCancerMagnetic resonance imagingmedicine.disease030218 nuclear medicine & medical imagingSupport vector machine03 medical and health sciences0302 clinical medicineBreast cancermedicine.anatomical_structureRadiomicsmedicineRadiologybusinessQuantization (image processing)030217 neurology & neurosurgery2017 IEEE 14th International Symposium on Biomedical Imaging (ISBI 2017)
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CT Radiomic Features and Clinical Biomarkers for Predicting Coronary Artery Disease

2023

AbstractThis study was aimed to investigate the predictive value of the radiomics features extracted from pericoronaric adipose tissue — around the anterior interventricular artery (IVA) — to assess the condition of coronary arteries compared with the use of clinical characteristics alone (i.e., risk factors). Clinical and radiomic data of 118 patients were retrospectively analyzed. In total, 93 radiomics features were extracted for each ROI around the IVA, and 13 clinical features were used to build different machine learning models finalized to predict the impairment (or otherwise) of coronary arteries. Pericoronaric radiomic features improved prediction above the use of risk factors alon…

Predictive modelsSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniRadiomic featuresCognitive NeuroscienceClinical featuresModel explainabilityComputer Vision and Pattern RecognitionPericoronaric adipose fatCoronary artery diseaseMachine learning classifiersComputer Science ApplicationsCognitive Computation
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A New Preclinical Decision Support System Based on PET Radiomics: A Preliminary Study on the Evaluation of an Innovative 64Cu-Labeled Chelator in Mou…

2022

The 64Cu-labeled chelator was analyzed in vivo by positron emission tomography (PET) imaging to evaluate its biodistribution in a murine model at different acquisition times. For this purpose, nine 6-week-old female Balb/C nude strain mice underwent micro-PET imaging at three different time points after 64Cu-labeled chelator injection. Specifically, the mice were divided into group 1 (acquisition 1 h after [64Cu] chelator administration, n = 3 mice), group 2 (acquisition 4 h after [64Cu]chelator administration, n = 3 mice), and group 3 (acquisition 24 h after [64Cu] chelator administration, n = 3 mice). Successively, all PET studies were segmented by means of registration with a standard te…

Settore ING-INF/05 - Sistemi Di Elaborazione Delle Informazioni64radiomics; micro-PET/CT; mouse imaging; atlas; <sup>64</sup>Cu-labeled chelatorCu-labeled chelatormicro-PET/CTComputer Graphics and Computer-Aided Design64Cu-labeled chelatoratlaradiomicsRadiology Nuclear Medicine and imagingatlasmouse imagingComputer Vision and Pattern RecognitionElectrical and Electronic EngineeringRadiomic64; Cu-labeled chelator; atlas; micro-PET/CT; mouse imaging; radiomicsradiomics; micro-PET/CT; mouse imaging; atlas; 64Cu-labeled chelator J.Journal of Imaging; Volume 8; Issue 4; Pages: 92
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[Radiomics and artificial intelligence: new frontiers in medicine.]

2020

Radiomics is a new frontier of medicine based on the extraction of quantitative data from radiological images which can not be seen by radiologist's naked eye and on the use of these data for the creation of clinical decision support systems. The long-term goal of radiomics is to improve the non-invasive diagnosis of focal and diffuse diseases of different organs by understanding links between extracted quantitative imaging data and the underlying molecular and pathological characteristics of lesions. In the last decade, several studies have highlighted the enormous potential of radiomics in both tumoral and non-tumoral diseases of many organs and systems including brain, lung, breast, gast…

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniDiagnostic ImagingRadiomicsArtificial IntelligenceNeoplasmsHumansPrecision MedicineSettore MED/36 - Diagnostica Per Immagini E RadioterapiaDecision Support Systems ClinicalImagingRecenti progressi in medicina
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ML-Based Radiomics Analysis for Breast Cancer Classification in DCE-MRI

2022

Breast cancer is the most common malignancy that threatening women’s health. Although Dynamic Contrast-Enhanced Magnetic Resonance Imaging (DCE-MRI) for breast lesions characterization is widely used in the clinical practice, physician grading performance is still not optimal, showing a specificity of about 72%. In this work Radiomics was used to analyze a dataset acquired with two different protocols in order to train Machine-Learning algorithms for breast cancer classification. Original radiomic features were expanded considering Laplacian of Gaussian filtering and Wavelet Transform images to evaluate whether they can improve predictive performance. A Multi-Instant features selection invo…

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniRadiomicsImage processingExplainable AIMachine learning
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Performance of Radiomics Features in the Quantification of Idiopathic Pulmonary Fibrosis from HRCT.

2020

Background: Our study assesses the diagnostic value of different features extracted from high resolution computed tomography (HRCT) images of patients with idiopathic pulmonary fibrosis. These features are investigated over a range of HRCT lung volume measurements (in Hounsfield Units) for which no prior study has yet been published. In particular, we provide a comparison of their diagnostic value at different Hounsfield Unit (HU) thresholds, including corresponding pulmonary functional tests. Methods: We consider thirty-two patients retrospectively for whom both HRCT examinations and spirometry tests were available. First, we analyse the HRCT histogram to extract quantitative lung fibrosis…

Spirometrymusculoskeletal diseasesHigh-resolution computed tomographyhigh resolution computed tomographyClinical Biochemistry-Article030218 nuclear medicine & medical imagingPulmonary function testing03 medical and health sciencesIdiopathic pulmonary fibrosis0302 clinical medicineRadiomicsHounsfield scalemedicineSettore ING-INF/05 - Sistemi Di Elaborazione Delle Informazionilcsh:R5-920Lungmedicine.diagnostic_testbusiness.industryLung fibrosisrespiratory systemmedicine.diseaseidiopathic pulmonary fibrosisrespiratory tract diseasesmedicine.anatomical_structure030228 respiratory systemradiomicslcsh:Medicine (General)businessNuclear medicineDiagnostics (Basel, Switzerland)
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