Investigator

Mei-Chee Tai

Postdoctoral scientist · Cancer Research Malaysia , Cancer Prevention and Population Sciences

MTMei-Chee Tai
Papers(1)
Predicting the Likeli…
Collaborators(10)
Nur Aishah Mohd TaibPeh Joo HoPei Sze NgSoo-Hwang TeoSook-Yee YoonTiara HassanVeronique K.M. TanWeang Kee HoAlexis J. KhngAndrew Lee
Institutions(6)
University Of Notting…University Of MalayaNational University o…Cancer Research Malay…National Cancer Centr…University Of Cambrid…

Papers

Predicting the Likelihood of Carrying a BRCA1 or BRCA2 Mutation in Asian Patients With Breast Cancer

PURPOSE With the development of poly (ADP-ribose) polymerase inhibitors for treatment of patients with cancer with an altered BRCA1 or BRCA2 gene, there is an urgent need to ensure that there are appropriate strategies for identifying mutation carriers while balancing the increased demand for and cost of cancer genetics services. To date, the majority of mutation prediction tools have been developed in women of European descent where the age and cancer-subtype distributions are different from that in Asian women. METHODS In this study, we built a new model (Asian Risk Calculator) for estimating the likelihood of carrying a pathogenic variant in BRCA1 or BRCA2 gene, using germline BRCA genetic testing results in a cross-sectional population-based study of 8,162 Asian patients with breast cancer. We compared the model performance to existing mutation prediction models. The models were evaluated for discrimination and calibration. RESULTS Asian Risk Calculator included age of diagnosis, ethnicity, bilateral breast cancer, tumor biomarkers, and family history of breast cancer or ovarian cancer as predictors. The inclusion of tumor grade improved significantly the model performance. The full model was calibrated (Hosmer-Lemeshow P value = .614) and discriminated well between BRCA and non- BRCA pathogenic variant carriers (area under receiver operating curve, 0.80; 95% CI, 0.75 to 0.84). Addition of grade to the existing clinical genetic testing criteria targeting patients with breast cancer age younger than 45 years reduced the proportion of patients referred for genetic counseling and testing from 37% to 33% ( P value = .003), thereby improving the overall efficacy. CONCLUSION Population-specific customization of mutation prediction models and clinical genetic testing criteria improved the accuracy of BRCA mutation prediction in Asian patients.

50Works
1Papers
18Collaborators

Positions

2019–

Postdoctoral scientist

Cancer Research Malaysia · Cancer Prevention and Population Sciences

2016–

Postdoctoral fellow

The University of Texas MD Anderson Cancer Center · Department of Translational Molecular Pathology

2015–

Researcher

Nagoya University Graduate School of Medicine · Division of Molecular Carcinogenesis

2007–

Research assistant

University of Malaya · Institute of Postgraduate Studies

Links & IDs
0000-0002-6191-9593

Scopus: 57002595100