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BACKGROUND: Breast cancer is the most common cancer among women in Sweden. Whereas survival for the overall breast cancer population is well-documented, survival of patients with metastatic breast cancer (MBC) is harder to quantify due to the lack of reliable data on disease recurrence in national cancer registers. METHODS: This study used machine learning to classify the total MBC population in Sweden diagnosed between 2009 and 2016 using national registers, with the aim to estimate overall survival (OS). RESULTS: The total population consisted of 13,832 patients-2528 (18.3%) had de novo MBC whereas 11,304 (81.7%) were classed as having a recurrent MBC. Median OS for patients with MBC was found to be 29.8 months 95% confidence interval (CI) 28.9, 30.6. Hormone-receptor (HR)-positive MBC had a median OS of 37.0 months 95% CI 35.9, 38.3 compared to 9.9 months 95% CI 9.1, 11.0 for patients with HR-negative MBC. CONCLUSION: This study covered the entire MBC population in Sweden during the study time and may serve as a baseline for assessing the effect of new treatment strategies in MBC introduced after the study period.
Valachis et al. (Sat,) studied this question.