Zhu Enzhao, Zhang Linmei, Liu Yixian, Ji Tianyu, Dai Jianmeng, Tang Ruichen, Wang Jiayi, Hu Chunyu, Chen Kai, Yu Qianyi, Lu Qiuyi, Ai Zisheng
School of Medicine, Tongji University, Shanghai, China.
Shanghai Engineering Research Center of Tooth Restoration and Regeneration & Tongji Research Institute of Stomatology & Department of Prosthodontics, Stomatological Hospital and Dental School, Tongji University, Shanghai, 200072, China.
Clin Transl Oncol. 2024 Oct;26(10):2584-2593. doi: 10.1007/s12094-024-03459-8. Epub 2024 Apr 28.
The survival advantage of neoadjuvant systemic therapy (NST) for breast cancer patients remains controversial, especially when considering the heterogeneous characteristics of individual patients.
To discern the variability in responses to breast cancer treatment at the individual level and propose personalized treatment recommendations utilizing deep learning (DL).
Six models were developed to offer individualized treatment suggestions. Outcomes for patients whose actual treatments aligned with model recommendations were compared to those whose did not. The influence of certain baseline features of patients on NST selection was visualized and quantified by multivariate logistic regression and Poisson regression analyses.
Our study included 94,487 female breast cancer patients. The Balanced Individual Treatment Effect for Survival data (BITES) model outperformed other models in performance, showing a statistically significant protective effect with inverse probability treatment weighting (IPTW)-adjusted baseline features [IPTW-adjusted hazard ratio: 0.51, 95% confidence interval (CI), 0.41-0.64; IPTW-adjusted risk difference: 21.46, 95% CI 18.90-24.01; IPTW-adjusted difference in restricted mean survival time: 21.51, 95% CI 19.37-23.80]. Adherence to BITES recommendations is associated with reduced breast cancer mortality and fewer adverse effects. BITES suggests that patients with TNM stage IIB, IIIB, triple-negative subtype, a higher number of positive axillary lymph nodes, and larger tumors are most likely to benefit from NST.
Our results demonstrated the potential of BITES to aid in clinical treatment decisions and offer quantitative treatment insights. In our further research, these models should be validated in clinical settings and additional patient features as well as outcome measures should be studied in depth.
新辅助全身治疗(NST)对乳腺癌患者的生存优势仍存在争议,尤其是考虑到个体患者的异质性特征时。
在个体水平上识别乳腺癌治疗反应的变异性,并利用深度学习(DL)提出个性化治疗建议。
开发了六个模型以提供个性化治疗建议。将实际治疗与模型建议一致的患者的结果与不一致的患者的结果进行比较。通过多变量逻辑回归和泊松回归分析对患者的某些基线特征对NST选择的影响进行可视化和量化。
我们的研究纳入了94487名女性乳腺癌患者。生存数据的平衡个体治疗效果(BITES)模型在性能上优于其他模型,在逆概率治疗权重(IPTW)调整的基线特征下显示出具有统计学意义的保护作用[IPTW调整后的风险比:0.51,95%置信区间(CI),0.41 - 0.64;IPTW调整后的风险差异:21.46,95%CI 18.90 - 24.01;IPTW调整后的受限平均生存时间差异:21.51,95%CI 19.37 - 23.80]。遵循BITES建议与降低乳腺癌死亡率和减少不良反应相关。BITES表明,TNM分期为IIB、IIIB、三阴性亚型、腋窝淋巴结阳性数量较多且肿瘤较大的患者最有可能从NST中获益。
我们的结果证明了BITES在辅助临床治疗决策和提供定量治疗见解方面的潜力。在我们的进一步研究中,这些模型应在临床环境中进行验证,并且应深入研究更多患者特征以及结局指标。