0000000000467574

AUTHOR

Maria Laura Di Vittorio

showing 3 related works from this author

Automatic multi-seed detection for MR breast image segmentation

2017

In this paper an automatic multi-seed detection method for magnetic resonance (MR) breast image segmentation is presented. The proposed method consists of three steps: (1) pre-processing step to locate three regions of interest (axillary and sternal regions); (2) processing step to detect maximum concavity points for each region of interest; (3) breast image segmentation step. Traditional manual segmentation methods require radiological expertise and they usually are very tiring and time-consuming. The approach is fast because the multi-seed detection is based on geometric properties of the ROI. When the maximum concavity points of the breast regions have been detected, region growing and m…

business.industryComputer scienceComputer Science (all)Pattern recognitionImage segmentationGold standard (test)Breast MR030218 nuclear medicine & medical imagingTheoretical Computer Science03 medical and health sciencesSeed detection0302 clinical medicineRegion of interestRegion growing030220 oncology & carcinogenesisManual segmentationSegmentationSensitivity (control systems)Artificial intelligenceAutomatic segmentationMr imagesbusinessMaximum concavity point
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Focal breast lesion characterization according to the BI-RADS US lexicon: role of a computer-aided decision-making support

2018

Objectives: to assess the diagnostic performance of a computer-guided decision- making software (S-Detect) in the US characterization of focal breast lesions (FBLs), according to the radiologist's experience. Materials and Methods: 300 FBLs (size: 2.6-47.2 mm; mean: 13.2 mm) in 255 patients (mean age: 51 years) were prospectively assessed in consensus according to BIRADS US lexicon by two experienced radiologists without and with S-Detect; to evaluate intra and inter-observer agreement, the same 300 FBLs were independently evaluated by two residents at baseline and after 3 months. Results: 120/300 (40%) FBLs were malignant, 2/300 (0.7%) high-risk and 178/300 (59.3%) benign. Experts review s…

AdultMalemedicine.medical_specialtySupport Vector MachineAdolescentdiagnosisBI-RADSBreast lesionneoplasmsBreast NeoplasmsBI-RADSLexiconComputer aidedBreast Neoplasms MaleDecision Support Techniques030218 nuclear medicine & medical imagingDiagnosis Differential03 medical and health sciences0302 clinical medicinePredictive Value of TestsmedicineHumansRadiology Nuclear Medicine and imagingDiagnosis Computer-AssistedBreastBI-RADS; breast; computer aided; diagnosis; neoplasms; ultrasonographyAgedNeuroradiologyUltrasonographyAged 80 and overmedicine.diagnostic_testbusiness.industryInterventional radiologyGeneral MedicineMiddle Aged030220 oncology & carcinogenesisComputer-aidedNeoplasmFemaleUltrasonography MammaryRadiologyUltrasonographybusinessSettore MED/36 - Diagnostica Per Immagini E RadioterapiaDiagnosi
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S-Detect characterization of focal solid breast lesions: a prospective analysis of inter-reader agreement for US BI-RADS descriptors

2020

Background: To assess inter-reader agreement for US BI-RADS descriptors using S-Detect: a computer-guided decision-making software assisting in US morphologic analysis. Methods: 73 solid focal breast lesions (FBLs) (mean size: 15.9 mm) in 73 consecutive women (mean age: 51 years) detected at US were randomly and independently assessed according to the BI-RADS US lexicon, without and with S-Detect, by five independent reviewers. US-guided core-biopsy and 24-month follow-up were considered as standard of reference. Kappa statistics were calculated to assess inter-operator agreement, between the baseline and after S-Detect evaluation. Agreement was graded as poor (≤ 0.20), moderate (0.21–0.40)…

BI-RADSProblem-solvingBreast NeoplasmsBI-RADSSettore MED/01 - Statistica Medica030218 nuclear medicine & medical imaging03 medical and health sciencesProspective analysis0302 clinical medicineCohen's kappaComputer-assisted diagnosiInternal MedicineHumansMedicineRadiology Nuclear Medicine and imagingUltrasonographyObserver VariationOriginal PaperBreast neoplasmbusiness.industryMean ageGeneral MedicineMiddle Aged030220 oncology & carcinogenesisFemaleUltrasonography MammarySettore MED/36 - Diagnostica Per Immagini E RadioterapiaNuclear medicinebusinessDecision-makingJournal of Ultrasound
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