Time-distance vision transformers in lung cancer diagnosis from longitudinal computed tomography
Thomas Z. Li, Kaiwen Xu, Riqiang Gao, Yucheng Tang, Thomas A. Lasko,, Fabien Maldonado, Kim Sandler, Bennett A. Landman

TL;DR
This paper introduces a novel self-attention-based framework called time-distance vision transformers for classifying longitudinal lung CT images, effectively capturing temporal changes to improve malignancy detection.
Contribution
It proposes two new interpretations of time-distance vision transformers tailored for irregularly sampled longitudinal medical imaging data, a first in the field.
Findings
Significantly outperforms standard ViTs on synthetic data.
Achieves comparable performance to leading longitudinal algorithms on NLST data.
Effectively captures temporal dynamics in sparse, irregularly sampled images.
Abstract
Features learned from single radiologic images are unable to provide information about whether and how much a lesion may be changing over time. Time-dependent features computed from repeated images can capture those changes and help identify malignant lesions by their temporal behavior. However, longitudinal medical imaging presents the unique challenge of sparse, irregular time intervals in data acquisition. While self-attention has been shown to be a versatile and efficient learning mechanism for time series and natural images, its potential for interpreting temporal distance between sparse, irregularly sampled spatial features has not been explored. In this work, we propose two interpretations of a time-distance vision transformer (ViT) by using (1) vector embeddings of continuous time and (2) a temporal emphasis model to scale self-attention weights. The two algorithms are evaluated…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Lung Cancer Diagnosis and Treatment · AI in cancer detection
MethodsMulti-Head Attention · Attention Is All You Need · Linear Layer · Softmax · Residual Connection · Dense Connections · Layer Normalization · Vision Transformer
