Review of non-clinical risk models to aid prevention of breast cancer

被引:0
|
作者
Kawthar Al-Ajmi
Artitaya Lophatananon
Martin Yuille
William Ollier
Kenneth R. Muir
机构
[1] The University of Manchester,Division of Population Health, Health Services Research and Primary Care, Faculty of Biology, Medicine and Health, Centre for Epidemiology
来源
Cancer Causes & Control | 2018年 / 29卷
关键词
Assessment risk tool; Calibration; Discrimination; Risk factors; Risk prediction; Concordance and E/O statistics;
D O I
暂无
中图分类号
学科分类号
摘要
A disease risk model is a statistical method which assesses the probability that an individual will develop one or more diseases within a stated period of time. Such models take into account the presence or absence of specific epidemiological risk factors associated with the disease and thereby potentially identify individuals at higher risk. Such models are currently used clinically to identify people at higher risk, including identifying women who are at increased risk of developing breast cancer. Many genetic and non-genetic breast cancer risk models have been developed previously. We have evaluated existing non-genetic/non-clinical models for breast cancer that incorporate modifiable risk factors. This review focuses on risk models that can be used by women themselves in the community in the absence of clinical risk factors characterization. The inclusion of modifiable factors in these models means that they can be used to improve primary prevention and health education pertinent for breast cancer. Literature searches were conducted using PubMed, ScienceDirect and the Cochrane Database of Systematic Reviews. Fourteen studies were eligible for review with sample sizes ranging from 654 to 248,407 participants. All models reviewed had acceptable calibration measures, with expected/observed (E/O) ratios ranging from 0.79 to 1.17. However, discrimination measures were variable across studies with concordance statistics (C-statistics) ranging from 0.56 to 0.89. We conclude that breast cancer risk models that include modifiable risk factors have been well calibrated but have less ability to discriminate. The latter may be a consequence of the omission of some significant risk factors in the models or from applying models to studies with limited sample sizes. More importantly, external validation is missing for most of the models. Generalization across models is also problematic as some variables may not be considered applicable to some populations and each model performance is conditioned by particular population characteristics. In conclusion, it is clear that there is still a need to develop a more reliable model for estimating breast cancer risk which has a good calibration, ability to accurately discriminate high risk and with better generalizability across populations.
引用
收藏
页码:967 / 986
页数:19
相关论文
共 50 条
  • [11] Assessing Risk of Breast Cancer: A Review of Risk Prediction Models
    Bhatt, Asha A.
    Woodard, Genevieve A.
    JOURNAL OF BREAST IMAGING, 2021, 3 (02) : 144 - 155
  • [12] Impact of Clinical and Non-Clinical Factors on the Choice of HER2 Test for Breast Cancer
    Ashok, Mahima
    Griffin, Paul
    Halpern, Michael
    CANCER INVESTIGATION, 2010, 28 (07) : 735 - 742
  • [13] Non-Clinical (Euthyroid) Hashimoto Thyroiditis as a Risk Factor for Thyroid Cancer.
    Todorova-Koteva, K.
    Staii, A.
    Jaume, J. C.
    ENDOCRINE REVIEWS, 2010, 31 (03)
  • [14] Clinical application of breast cancer risk assessment models
    Ready, Kaylene
    Litton, Jennifer K.
    Arun, Banu K.
    FUTURE ONCOLOGY, 2010, 6 (03) : 355 - 365
  • [15] Risk prediction models for breast cancer: a systematic review
    Zheng, Yadi
    Li, Jiang
    Wu, Zheng
    Li, He
    Cao, Maomao
    Li, Ni
    He, Jie
    BMJ OPEN, 2022, 12 (07):
  • [16] A Clinical Risk Model for Personalized Screening and Prevention of Breast Cancer
    Eriksson, Mikael
    Czene, Kamila
    Vachon, Celine
    Conant, Emily F.
    Hall, Per
    CANCERS, 2023, 15 (12)
  • [17] Review of the literature on high risk of breast cancer and prevention strategies
    Peralta, Octavio
    Eugenia Bravo, Maria
    Amar, Marcela
    Arnello, Francisca
    Barriga, Carolina
    Carvallo, Pilar
    Dominguez, Francisco
    Gamboa, Jorge
    Gutierrez, Lorena
    Jara, Lilian
    Moyano, Leonor
    Neira, Paulina
    Pardo, Mario
    Razmilic, Dravna
    Saez, Carla
    Vigueras, Gonzalo
    MEDWAVE, 2010, 10 (01):
  • [18] Non-clinical factors associated with intentionally reduced breast cancer chemotherapy doses.
    Culakova, E.
    Griggs, J. J.
    Sorbero, M. E.
    Wolff, D. A.
    Poniewierski, M. S.
    Lyman, G. H.
    JOURNAL OF CLINICAL ONCOLOGY, 2006, 24 (18) : 306S - 306S
  • [19] Breastfeeding and the prevention of breast cancer: a retrospective review of clinical histories
    Gonzalez-Jimenez, Emilio
    Garcia, Pedro A.
    Jose Aguilar, Maria
    Padilla, Carlos A.
    Alvarez, Judit
    JOURNAL OF CLINICAL NURSING, 2014, 23 (17-18) : 2397 - 2403
  • [20] Validation study results for a personalized prevention education aid in breast cancer risk reduction
    Wang, Tianyi
    Che, Mandy
    Huilgol, Yash
    Goodman, Deborah
    Keane, Holly
    Lee, Vivian
    Belkora, Jeff
    Fiscalini, Allison
    Esserman, Laura
    CANCER RESEARCH, 2021, 81 (04)