SOTAVerified

Temporal Convolutional Neural Networks for Diagnosis from Lab Tests

2015-11-25Code Available0· sign in to hype

Narges Razavian, David Sontag

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Early diagnosis of treatable diseases is essential for improving healthcare, and many diseases' onsets are predictable from annual lab tests and their temporal trends. We introduce a multi-resolution convolutional neural network for early detection of multiple diseases from irregularly measured sparse lab values. Our novel architecture takes as input both an imputed version of the data and a binary observation matrix. For imputing the temporal sparse observations, we develop a flexible, fast to train method for differentiable multivariate kernel regression. Our experiments on data from 298K individuals over 8 years, 18 common lab measurements, and 171 diseases show that the temporal signatures learned via convolution are significantly more predictive than baselines commonly used for early disease diagnosis.

Tasks

Reproductions