» Articles » PMID: 15191295

Computerized Interpretation of Breast MRI: Investigation of Enhancement-variance Dynamics

Overview
Journal Med Phys
Specialty Biophysics
Date 2004 Jun 12
PMID 15191295
Citations 80
Authors
Affiliations
Soon will be listed here.
Abstract

The advantages of breast MRI using contrast agent Gd-DTPA in the diagnosis of breast cancer have been well established. The variation of interpretation criteria and absence of interpretation guidelines, however, is a major obstacle for applications of MRI in the routine clinical practice of breast imaging. Our study aims to increase the objectivity and reproducibility of breast MRI interpretation by developing an automated interpretation approach for ultimate use in computer-aided diagnosis. The database in this study contains 121 cases: 77 malignant and 44 benign masses as revealed by biopsy. Images were obtained using a T1-weighted 3D spoiled gradient echo sequence. After the acquisition of the precontrast series, Gd-DTPA contrast agent was injected intravenously by power injection with a dose of 0.2 mmol/kg. Five postcontrast series were then taken with a time interval of 60 s. Each series contained 64 coronal slices with a matrix of 128 x 256 pixels and an in-plane resolution of 1.25 x 1.25 mm2. Slice thickness ranged from 2 to 3 mm depending on breast size. The lesions were delineated by an experienced radiologist as well as independently by computer using an automatic volume-growing algorithm. Fourteen features that were extracted automatically from the lesions could be grouped into three categories based on (I) morphology, (II) enhancement kinetics, and (III) time course of enhancement-variation over the lesion. A stepwise feature selection procedure was employed to select an effective subset of features, which were then combined by linear discriminant analysis (LDA) into a discriminant score, related to the likelihood of malignancy. The classification performances of individual features and the combined discriminant score were evaluated with receiver operating characteristic (ROC) analysis. With the radiologist-delineated lesion contours, stepwise feature selection yielded four features and an Az value of 0.80 for the LDA in leave-one-out cross-validation testing. With the computer-segmented lesion volumes, it yielded six features and an Az value of 0.86 for the LDA in the leave-one-out testing.

Citing Articles

Artificial Intelligence-Enhanced Breast MRI: Applications in Breast Cancer Primary Treatment Response Assessment and Prediction.

Gullo R, Marcus E, Huayanay J, Eskreis-Winkler S, Thakur S, Teuwen J Invest Radiol. 2023; 59(3):230-242.

PMID: 37493391 PMC: 10818006. DOI: 10.1097/RLI.0000000000001010.


Criteria for the translation of radiomics into clinically useful tests.

Huang E, OConnor J, McShane L, Giger M, Lambin P, Kinahan P Nat Rev Clin Oncol. 2022; 20(2):69-82.

PMID: 36443594 PMC: 9707172. DOI: 10.1038/s41571-022-00707-0.


Type 2 dynamic curves: A diagnostic dilemma.

Karavas E, Ece B, Aydin S World J Radiol. 2022; 14(7):229-237.

PMID: 36160627 PMC: 9350610. DOI: 10.4329/wjr.v14.i7.229.


Effect of biopsy on the MRI radiomics classification of benign lesions and luminal A cancers.

Whitney H, Drukker K, Edwards A, Papaioannou J, Giger M J Med Imaging (Bellingham). 2022; 6(3):031408.

PMID: 35834307 PMC: 6378704. DOI: 10.1117/1.JMI.6.3.031408.


Impact of continuous learning on diagnostic breast MRI AI: evaluation on an independent clinical dataset.

Li H, Whitney H, Ji Y, Edwards A, Papaioannou J, Liu P J Med Imaging (Bellingham). 2022; 9(3):034502.

PMID: 35685120 PMC: 9168763. DOI: 10.1117/1.JMI.9.3.034502.