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The Impact of Chemotherapy and Survival Prediction by Machine Learning in Early Elderly Triple Negative Breast Cancer (eTNBC): a Population Based Study from the SEER Database

Overview
Journal BMC Geriatr
Publisher Biomed Central
Specialty Geriatrics
Date 2022 Apr 1
PMID 35361134
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Abstract

Purpose: We aimed to analysis the impact of chemotherapy and establish prediction models of prognosis in early elderly triple negative breast cancer (eTNBC) by using machine learning.

Methods: We enrolled 4,696 patients in SEER Database who were 70 years or older, diagnosed with primary early TNBC(larger than 5 mm), from 2010 to 2016. The propensity-score matched method was utilized to reduce covariable imbalance. Univariable and multivariable analyses were used to compare breast cancer-specific survival(BCSS) and overall survival(OS). Nine models were developed by machine learning to predict the 5-year OS and BCSS for patients received chemotherapy.

Results: Compared to matched patients in no-chemotherapy group, multivariate analysis showed a better survival in chemotherapy group. Stratified analyses by stage demonstrated that patients with stage II and stage III other than stage I could benefit from chemotherapy. Further investigation in stage II found that chemotherapy was a better prognostic indicator for patients with T2N0M0 and stage IIb, but not in T1N1M0. Patients with grade III could achieve a better survival by receiving chemotherapy, but those with grade I and II couldn't. With 0.75 in 5-year BCSS and 0.81 in 5-year OS for AUC, the LightGBM outperformed other algorithms.

Conclusion: For early eTNBC patients with stage I, T1N1M0 and grade I-II, chemotherapy couldn't improve survival. Therefore, de-escalation therapy might be appropriate for selected patients. The LightGBM is a trustful model to predict the survival and provide precious systemic treatment for patients received chemotherapy.

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References
1.
Delen D, Walker G, Kadam A . Predicting breast cancer survivability: a comparison of three data mining methods. Artif Intell Med. 2005; 34(2):113-27. DOI: 10.1016/j.artmed.2004.07.002. View

2.
Schwartzberg L, Blair S . Strategies for the Management of Early-Stage Breast Cancer in Older Women. J Natl Compr Canc Netw. 2016; 14(5 Suppl):647-50. DOI: 10.6004/jnccn.2016.0182. View

3.
Kaplan H, Malmgren J, Atwood M . Triple-negative breast cancer in the elderly: Prognosis and treatment. Breast J. 2017; 23(6):630-637. DOI: 10.1111/tbj.12813. View

4.
DeSantis C, Ma J, Gaudet M, Newman L, Miller K, Sauer A . Breast cancer statistics, 2019. CA Cancer J Clin. 2019; 69(6):438-451. DOI: 10.3322/caac.21583. View

5.
Loibl S, Poortmans P, Morrow M, Denkert C, Curigliano G . Breast cancer. Lancet. 2021; 397(10286):1750-1769. DOI: 10.1016/S0140-6736(20)32381-3. View