A multimodal neural network with gradient blending improves predictions of survival and metastasis in sarcoma

IF 6.8 1区 医学 Q1 ONCOLOGY
Anthony Bozzo, Alex Hollingsworth, Subrata Chatterjee, Aditya Apte, Jiawen Deng, Simon Sun, William Tap, Ahmed Aoude, Sahir Bhatnagar, John H. Healey
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Abstract

The objective of this study is to develop a multimodal neural network (MMNN) model that analyzes clinical variables and MRI images of a soft tissue sarcoma (STS) patient, to predict overall survival and risk of distant metastases. We compare the performance of this MMNN to models based on clinical variables alone, radiomics models, and an unimodal neural network. We include patients aged 18 or older with biopsy-proven STS who underwent primary resection between January 1st, 2005, and December 31st, 2020 with complete outcome data and a pre-treatment MRI with both a T1 post-contrast sequence and a T2 fat-sat sequence available. A total of 9380 MRI slices containing sarcomas from 287 patients are available. Our MMNN accepts the entire 3D sarcoma volume from T1 and T2 MRIs and clinical variables. Gradient blending allows the clinical and image sub-networks to optimally converge without overfitting. Heat maps were generated to visualize the salient image features. Our MMNN outperformed all other models in predicting overall survival and the risk of distant metastases. The C-Index of our MMNN for overall survival is 0.77 and the C-Index for risk of distant metastases is 0.70. The provided heat maps demonstrate areas of sarcomas deemed most salient for predictions. Our multimodal neural network with gradient blending improves predictions of overall survival and risk of distant metastases in patients with soft tissue sarcoma. Future work enabling accurate subtype-specific predictions will likely utilize similar end-to-end multimodal neural network architecture and require prospective curation of high-quality data, the inclusion of genomic data, and the involvement of multiple centers through federated learning.

Abstract Image

Abstract Image

具有梯度混合功能的多模态神经网络提高了对肉瘤存活率和转移率的预测。
本研究的目的是开发一种多模态神经网络(MMNN)模型,通过分析软组织肉瘤(STS)患者的临床变量和核磁共振成像图像来预测患者的总生存期和远处转移风险。我们将该 MMNN 的性能与仅基于临床变量的模型、放射组学模型和单模态神经网络进行了比较。我们将 2005 年 1 月 1 日至 2020 年 12 月 31 日期间接受原发性切除术的 18 岁或以上活检证实 STS 患者纳入研究对象,这些患者均有完整的治疗结果数据和治疗前磁共振成像(T1 后对比序列和 T2 脂肪-卫星序列)。共有来自 287 名患者的 9380 个包含肉瘤的 MRI 切片可用。我们的 MMNN 接受来自 T1 和 T2 MRI 以及临床变量的整个三维肉瘤体积。梯度混合使临床和图像子网络在不过度拟合的情况下达到最佳收敛。生成的热图可直观显示突出的图像特征。在预测总生存期和远处转移风险方面,我们的 MMNN 优于所有其他模型。我们的 MMNN 预测总生存期的 C 指数为 0.77,预测远处转移风险的 C 指数为 0.70。所提供的热图显示了肉瘤中最突出的预测区域。我们的梯度混合多模态神经网络提高了对软组织肉瘤患者总生存期和远处转移风险的预测。未来的工作可能会利用类似的端到端多模态神经网络架构来实现准确的亚型特异性预测,并需要对高质量数据进行前瞻性整理、纳入基因组数据以及通过联合学习让多个中心参与进来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.90
自引率
1.30%
发文量
87
审稿时长
18 weeks
期刊介绍: Online-only and open access, npj Precision Oncology is an international, peer-reviewed journal dedicated to showcasing cutting-edge scientific research in all facets of precision oncology, spanning from fundamental science to translational applications and clinical medicine.
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