CVJan 25, 2018

Convolutional Invasion and Expansion Networks for Tumor Growth Prediction

arXiv:1801.08468v164 citations
Originality Incremental advance
AI Analysis

This work addresses tumor growth prediction for medical applications, offering a more efficient and accurate method that can be personalized using population data, representing an incremental advance over traditional mathematical models.

The authors tackled tumor growth prediction by developing deep convolutional neural networks to model cell invasion and mass-effect, achieving substantial improvements in accuracy and efficiency over a state-of-the-art mathematical model-based approach on a pancreatic tumor dataset.

Tumor growth is associated with cell invasion and mass-effect, which are traditionally formulated by mathematical models, namely reaction-diffusion equations and biomechanics. Such models can be personalized based on clinical measurements to build the predictive models for tumor growth. In this paper, we investigate the possibility of using deep convolutional neural networks (ConvNets) to directly represent and learn the cell invasion and mass-effect, and to predict the subsequent involvement regions of a tumor. The invasion network learns the cell invasion from information related to metabolic rate, cell density and tumor boundary derived from multimodal imaging data. The expansion network models the mass-effect from the growing motion of tumor mass. We also study different architectures that fuse the invasion and expansion networks, in order to exploit the inherent correlations among them. Our network can easily be trained on population data and personalized to a target patient, unlike most previous mathematical modeling methods that fail to incorporate population data. Quantitative experiments on a pancreatic tumor data set show that the proposed method substantially outperforms a state-of-the-art mathematical model-based approach in both accuracy and efficiency, and that the information captured by each of the two subnetworks are complementary.

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