Iterative DNA Coding Scheme With GC Balance and Run-Length Constraints Using a Greedy Algorithm

03/05/2021
by   Seong-Joon Park, et al.
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In this paper, we propose a novel iterative encoding algorithm for DNA storage to satisfy both the GC balance and run-length constraints using a greedy algorithm. DNA strands with run-length more than three and the GC balance ratio far from 50% are known to be prone to errors. The proposed encoding algorithm stores data at high information density with high flexibility of run-length at most m and GC balance between 0.5±α for arbitrary m and α. More importantly, we propose a novel mapping method to reduce the average bit error compared to the randomly generated mapping method, using a greedy algorithm. The proposed algorithm is implemented through iterative encoding, consisting of three main steps: randomization, M-ary mapping, and verification. It has an information density of 1.8616 bits/nt in the case of m=3, which approaches the theoretical upper bound of 1.98 bits/nt, while satisfying two constraints. Also, the average bit error caused by the one nt error is 2.3455 bits, which is reduced by 20.5%, compared to the randomized mapping.

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