Survival prediction in triple-negative breast cancer: a Cox model with fairness assessment using ISO/IEC TR 24027:2021 in a MENA cohort
Mehrshad Alirezaei Farahani, Fateme Sadeghipour, Hamid Reza Marateb, Maryam Soltan, Azar Naimi, Marjan Mansourian

TL;DR
This study creates a fair and accurate survival prediction model for triple-negative breast cancer patients in the MENA region using clinical data and fairness guidelines.
Contribution
The study introduces a fairness-assessed Cox survival model for TNBC using ISO/IEC TR 24027:2021 in a MENA cohort.
Findings
The CoxPH model achieved a C-index of 0.80 and an AUROC of 0.81, showing strong predictive performance.
Calibration plots indicated good agreement between predicted and observed survival probabilities.
Fairness assessment revealed minor disparities in false-positive rates across age groups and surgical categories.
Abstract
Triple-negative breast cancer (TNBC) is an aggressive subtype with limited therapeutic options and poor survival outcomes. Prognostic models developed in Western cohorts rarely assess algorithmic fairness. This study aimed to develop and internally validate a clinically interpretable Cox survival model for TNBC using baseline diagnostic variables and to evaluate its fairness according to ISO/IEC TR 24027:2021 guidelines in a Middle East and North Africa (MENA) cohort. A total of 138 TNBC patients were included after merging two institutional datasets and removing variables with > 25% missingness. Baseline features comprised age, tumor size, lymph node involvement, tumor grade, Ki-67, type of surgery, metastasis at diagnosis, chemotherapy, and radiotherapy. A Cox proportional hazards (CoxPH) model with six clinically established predictors was fitted to reduce overfitting. Model…
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Taxonomy
TopicsBreast Cancer Treatment Studies · AI in cancer detection · Radiomics and Machine Learning in Medical Imaging
