Zhu Enzhao, Zhang Linmei, Wang Jiayi, Hu Chunyu, Jing Qi, Shi Weizhong, Xu Ziqin, Ai Pu, Dai Zhihao, Shan Dan, Ai Zisheng
School of Medicine Tongji University Shanghai China.
Shanghai Engineering Research Center of Tooth Restoration and Regeneration, Research Institute of Stomatology, Stomatological Hospital and Dental School of Tongji University Shanghai China.
Cancer Innov. 2024 Apr 15;3(3):e119. doi: 10.1002/cai2.119. eCollection 2024 Jun.
The role of surgery in metastatic breast cancer (MBC) is currently controversial. Several novel statistical and deep learning (DL) methods promise to infer the suitability of surgery at the individual level.
The objective of this study was to identify the most applicable DL model for determining patients with MBC who could benefit from surgery and the type of surgery required.
We introduced the deep survival regression with mixture effects (DSME), a semi-parametric DL model integrating three causal inference methods. Six models were trained to make individualized treatment recommendations. Patients who received treatments in line with the DL models' recommendations were compared with those who underwent treatments divergent from the recommendations. Inverse probability weighting (IPW) was used to minimize bias. The effects of various features on surgery selection were visualized and quantified using multivariate linear regression and causal inference.
In total, 5269 female patients with MBC were included. DSME was an independent protective factor, outperforming other models in recommending surgery (IPW-adjusted hazard ratio [HR] = 0.39, 95% confidence interval [CI]: 0.19-0.78) and type of surgery (IPW-adjusted HR = 0.66, 95% CI: 0.48-0.93). DSME was superior to other models and traditional guidelines, suggesting a higher proportion of patients benefiting from surgery, especially breast-conserving surgery. The debiased effect of patient characteristics, including age, tumor size, metastatic sites, lymph node status, and breast cancer subtypes, on surgery decision was also quantified.
Our findings suggested that DSME could effectively identify patients with MBC likely to benefit from surgery and the specific type of surgery needed. This method can facilitate the development of efficient, reliable treatment recommendation systems and provide quantifiable evidence for decision-making.
手术在转移性乳腺癌(MBC)中的作用目前存在争议。几种新颖的统计和深度学习(DL)方法有望在个体层面推断手术的适用性。
本研究的目的是确定最适用的DL模型,以确定哪些MBC患者可以从手术中获益以及所需的手术类型。
我们引入了具有混合效应的深度生存回归(DSME),这是一种整合了三种因果推断方法的半参数DL模型。训练了六个模型以做出个性化的治疗建议。将接受符合DL模型建议治疗的患者与接受与建议不同治疗的患者进行比较。使用逆概率加权(IPW)来最小化偏差。使用多元线性回归和因果推断对各种特征对手术选择的影响进行可视化和量化。
总共纳入了5269例女性MBC患者。DSME是一个独立的保护因素,在推荐手术(IPW调整后的风险比[HR]=0.39,95%置信区间[CI]:0.19-0.78)和手术类型(IPW调整后的HR=0.66,95%CI:0.48-0.93)方面优于其他模型。DSME优于其他模型和传统指南,表明受益于手术的患者比例更高,尤其是保乳手术。还量化了包括年龄、肿瘤大小、转移部位、淋巴结状态和乳腺癌亚型在内的患者特征对手术决策的去偏效应。
我们的研究结果表明,DSME可以有效地识别可能从手术中获益的MBC患者以及所需的具体手术类型。这种方法可以促进高效、可靠的治疗推荐系统的开发,并为决策提供可量化的证据。