Verma Monu, Abdelrahman Leila, Collado-Mesa Fernando, Abdel-Mottaleb Mohamed
Department of Electrical and Computer Engineering, University of Miami, Miami, FL 33146, USA.
MIT Media Lab, Cambridge, MA 02139-4307, USA.
Diagnostics (Basel). 2023 Jul 3;13(13):2251. doi: 10.3390/diagnostics13132251.
Current approaches to breast cancer therapy include neoadjuvant systemic therapy (NST). The efficacy of NST is measured by pathologic complete response (pCR). A patient who attains pCR has significantly enhanced disease-free survival progress. The accurate prediction of pCR in response to a given treatment regimen could increase the likelihood of achieving pCR and prevent toxicities caused by treatments that are not effective. Th early prediction of response to NST can increase the likelihood of survival and help with decisions regarding breast-conserving surgery. An automated NST prediction framework that is able to precisely predict which patient undergoing NST will achieve a pathological complete response (pCR) at an early stage of treatment is needed. Here, we propose an end-to-end efficient multimodal spatiotemporal deep learning framework (deep-NST) framework to predict the outcome of NST prior or at an early stage of treatment. The deep-NST model incorporates imaging data captured at different timestamps of NST regimens, a tumor's molecular data, and a patient's demographic data. The efficacy of the proposed work is validated on the publicly available ISPY-1 dataset, in terms of accuracy, area under the curve (AUC), and computational complexity. In addition, seven ablation experiments were carried out to evaluate the impact of each design module in the proposed work. The experimental results show that the proposed framework performs significantly better than other recent methods.
当前乳腺癌治疗方法包括新辅助全身治疗(NST)。NST的疗效通过病理完全缓解(pCR)来衡量。达到pCR的患者无病生存进展显著增强。准确预测对给定治疗方案的pCR可提高实现pCR的可能性,并预防无效治疗所导致的毒性。对NST反应的早期预测可提高生存可能性,并有助于做出保乳手术的决策。需要一个能够在治疗早期精确预测哪些接受NST的患者将实现病理完全缓解(pCR)的自动化NST预测框架。在此,我们提出一个端到端高效多模态时空深度学习框架(deep-NST)来在治疗前或治疗早期预测NST的结果。deep-NST模型纳入了在NST方案不同时间点采集的影像数据、肿瘤的分子数据以及患者的人口统计学数据。所提工作的有效性在公开可用的ISPY-1数据集上根据准确率、曲线下面积(AUC)和计算复杂度进行了验证。此外,还进行了七次消融实验以评估所提工作中每个设计模块的影响。实验结果表明,所提框架的表现明显优于其他近期方法。