Short human eccDNAs are predictable from sequences

Abstract

Background: Ubiquitous presence of short extrachromosomal circular DNAs (eccDNAs) in eukaryotic cells has perplexed generations of biologists. Their widespread origins in the genome lacking apparent specificity led some studies to conclude their formation as random or near-random. Despite this, the search for specific formation of short eccDNA continues with a recent surge of interest in biomarker development. Results: To shed new light on the conf licting views on short eccDNAs’ randomness, here we present DeepCircle, a bioinformatics framework incorporating convolution- and attention-based neural networks to assess their predictability. Short human eccDNAs from different datasets indeed have low similarity in genomic locations, but DeepCircle successfully learned shared DNA sequence features to make accurate cross-datasets predictions (accuracy: convolution-based models: 79.65±4.7%, attention-based models: 83.31 ± 4.18%). Conclusions: The excellent performance of our models shows that the intrinsic predictability of eccDNAs is encoded in the sequences across tissue origins. Our work demonstrates how the perceived lack of specificity in genomics data can be re-assessed by deep learning models to uncover unexpected similarity.

Publication
Briefings in Bioinformatics
Kai-Li Chang
Kai-Li Chang
Research Assistant
Tzuchieh Lin
Tzuchieh Lin
Research Assistant
Wong Jin Yung
Wong Jin Yung
Postdoctoral Researcher
Huai-Kuang Tsai
Huai-Kuang Tsai
Research Fellow/Professor