» Articles » PMID: 36585732

Studies of Parenchymal Texture Added to Mammographic Breast Density and Risk of Breast Cancer: a Systematic Review of the Methods Used in the Literature

Overview
Specialty Oncology
Date 2022 Dec 30
PMID 36585732
Authors
Affiliations
Soon will be listed here.
Abstract

This systematic review aimed to assess the methods used to classify mammographic breast parenchymal features in relation to the prediction of future breast cancer. The databases including Medline (Ovid) 1946-, Embase.com 1947-, CINAHL Plus 1937-, Scopus 1823-, Cochrane Library (including CENTRAL), and Clinicaltrials.gov were searched through October 2021 to extract published articles in English describing the relationship of parenchymal texture features with the risk of breast cancer. Twenty-eight articles published since 2016 were included in the final review. The identification of parenchymal texture features varied from using a predefined list to machine-driven identification. A reduction in the number of features chosen for subsequent analysis in relation to cancer incidence then varied across statistical approaches and machine learning methods. The variation in approach and number of features identified for inclusion in analysis precluded generating a quantitative summary or meta-analysis of the value of these features to improve predicting risk of future breast cancers. This updated overview of the state of the art revealed research gaps; based on these, we provide recommendations for future studies using parenchymal features for mammogram images to make use of accumulating image data, and external validation of prediction models that extend to 5 and 10 years to guide clinical risk management. Following these recommendations could enhance the applicability of models, helping improve risk classification and risk prediction for women to tailor screening and prevention strategies to the level of risk.

Citing Articles

Investigating the relationship between breast cancer risk factors and an AI-generated mammographic texture feature in the Nurses' Health Study II.

Wu X, Jiang S, Ge A, Turman C, Colditz G, Colditz G medRxiv. 2025; .

PMID: 40034795 PMC: 11875271. DOI: 10.1101/2025.02.18.25322419.


Development and Validation of Dynamic 5-Year Breast Cancer Risk Model Using Repeated Mammograms.

Jiang S, Bennett D, Rosner B, Tamimi R, Colditz G JCO Clin Cancer Inform. 2024; 8:e2400200.

PMID: 39637342 PMC: 11634085. DOI: 10.1200/CCI-24-00200.


Automated Breast Density Assessment for Full-Field Digital Mammography and Digital Breast Tomosynthesis.

Jiang S, Bennett D, Chen S, Toriola A, Colditz G Cancer Prev Res (Phila). 2024; 18(1):23-29.

PMID: 39450526 PMC: 11701431. DOI: 10.1158/1940-6207.CAPR-24-0338.


Assessment of the Breast Density Prevalence in Swiss Women with a Deep Convolutional Neural Network: A Cross-Sectional Study.

Kaiser A, Zanolin-Purin D, Chuck N, Enaux J, Wruk D Diagnostics (Basel). 2024; 14(19).

PMID: 39410616 PMC: 11476330. DOI: 10.3390/diagnostics14192212.


Clinical Significance of Combined Density and Deep-Learning-Based Texture Analysis for Stratifying the Risk of Short-Term and Long-Term Breast Cancer in Screening.

Vilmun B, Napolitano G, Lauritzen A, Lynge E, Lillholm M, Nielsen M Diagnostics (Basel). 2024; 14(16).

PMID: 39202310 PMC: 11353655. DOI: 10.3390/diagnostics14161823.


References
1.
Visvanathan K, Fabian C, Bantug E, Brewster A, Davidson N, DeCensi A . Use of Endocrine Therapy for Breast Cancer Risk Reduction: ASCO Clinical Practice Guideline Update. J Clin Oncol. 2019; 37(33):3152-3165. DOI: 10.1200/JCO.19.01472. View

2.
Tan M, Zheng B, Leader J, Gur D . Association Between Changes in Mammographic Image Features and Risk for Near-Term Breast Cancer Development. IEEE Trans Med Imaging. 2016; 35(7):1719-28. PMC: 4938728. DOI: 10.1109/TMI.2016.2527619. View

3.
Pertuz S, Sassi A, Holli-Helenius K, Kamarainen J, Rinta-Kiikka I, Laaperi A . Clinical evaluation of a fully-automated parenchymal analysis software for breast cancer risk assessment: A pilot study in a Finnish sample. Eur J Radiol. 2019; 121:108710. DOI: 10.1016/j.ejrad.2019.108710. View

4.
Azam S, Eriksson M, Sjolander A, Gabrielson M, Hellgren R, Czene K . Mammographic microcalcifications and risk of breast cancer. Br J Cancer. 2021; 125(5):759-765. PMC: 8405644. DOI: 10.1038/s41416-021-01459-x. View

5.
Gastounioti A, Desai S, Ahluwalia V, Conant E, Kontos D . Artificial intelligence in mammographic phenotyping of breast cancer risk: a narrative review. Breast Cancer Res. 2022; 24(1):14. PMC: 8859891. DOI: 10.1186/s13058-022-01509-z. View