Strain Elastography Fat-to-Lesion Index Is Associated with Mammography BI-RADS Grading, Biopsy, and Molecular Phenotype in Breast Cancer.
Jose Alfonso Cruz-RamosMijaíl Irak Trapero-CoronaIngrid Aurora Valencia-HernándezLuz Amparo Gómez-VargasMaría Teresa Toranzo-DelgadoKarla Raquel Cano-MagañaEmmanuel De la Mora-JiménezGabriela Del Carmen López-ArmasPublished in: Biosensors (2024)
Breast cancer (BC) affects millions of women worldwide, causing over 500,000 deaths annually. It is the leading cause of cancer mortality in women, with 70% of deaths occurring in developing countries. Elastography, which evaluates tissue stiffness, is a promising real-time minimally invasive technique for BC diagnosis. This study assessed strain elastography (SE) and the fat-to-lesion (F/L) index for BC diagnosis. This prospective study included 216 women who underwent SE, ultrasound, mammography, and breast biopsy (108 malignant, 108 benign). Three expert radiologists performed imaging and biopsies. Mean F/L index was 3.70 ± 2.57 for benign biopsies and 18.10 ± 17.01 for malignant. We developed two predictive models: a logistic regression model with AUC 0.893, 79.63% sensitivity, 87.62% specificity, 86.9% positive predictive value (+PV), and 80.7% negative predictive value (-PV); and a neural network with AUC 0.902, 80.56% sensitivity, 88.57% specificity, 87.9% +PV, and 81.6% -PV. The optimal Youden F/L index cutoff was >5.76, with 84.26% sensitivity and specificity. The F/L index positively correlated with BI-RADS (Spearman's r = 0.073, p < 0.001) and differed among molecular subtypes (Kruskal-Wallis, p = 0.002). SE complements mammography for BC diagnosis. With adequate predictive capacity, SE is fast, minimally invasive, and useful when mammography is contraindicated.
Keyphrases
- minimally invasive
- contrast enhanced
- ultrasound guided
- neural network
- adipose tissue
- magnetic resonance imaging
- image quality
- liver fibrosis
- papillary thyroid
- type diabetes
- high resolution
- squamous cell carcinoma
- pregnancy outcomes
- robot assisted
- skeletal muscle
- fatty acid
- machine learning
- contrast enhanced ultrasound