The folding structure of the DNA molecule combined with helper molecules,
also referred to as the chromatin, is highly relevant for the functional
properties of DNA. The chromatin structure is largely determined by the
underlying primary DNA sequence, though the interaction is not yet fully
understood. In this paper we develop a convolutional neural network that takes
an image-representation of primary DNA sequence as its input, and predicts key
determinants of chromatin structure. The method is developed such that it is
capable of detecting interactions between distal elements in the DNA sequence,
which are known to be highly relevant. Our experiments show that the method
outperforms several existing methods both in terms of prediction accuracy and
training time.Comment: Published at ICLR 2018, https://openreview.net/pdf?id=HJvvRoe0