Lung Nodule Malignancy Prediction from Longitudinal CT Scans with Siamese Convolutional Attention Networks

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Abstract

Goal: We propose a convolutional attention-based network that allows for use of pre-trained 2-D convolutional feature extractors and is extendable to multi-time-point classification in a Siamese structure. Methods: Our proposed framework is evaluated for single-and multi-time-point classification to explore the value that temporal information, such as nodule growth, adds to malignancy prediction. Results: Our results show that the proposed method outperforms a comparable 3-D network with less than half the parameters on single-time-point classification and further achieves performance gains on multi-time-point classification. Conclusions: Attention-based, Siamese 2-D pre-trained CNNs lead to fast training times and are effective for malignancy prediction from single-time-point or multiple-time-point imaging data.

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Veasey, B. P., Broadhead, J., Dahle, M., Seow, A., & Amini, A. A. (2020). Lung Nodule Malignancy Prediction from Longitudinal CT Scans with Siamese Convolutional Attention Networks. IEEE Open Journal of Engineering in Medicine and Biology, 1, 257–264. https://doi.org/10.1109/OJEMB.2020.3023614

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