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Structure-Informed Multiple Sequence Alignment: A Formal Model and Hardness Results
arXiv Q-Bio
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이 매체는 공공·자유 라이선스로 본문을 직접 표시합니다.Computer Science > Computational Complexity
[Submitted on 1 Jun 2026]
Title:Structure-Informed Multiple Sequence Alignment: A Formal Model and Hardness Results
View PDF HTML (experimental)Abstract:We formulate a structure-informed multiple sequence alignment problem, denoted MSA-S. The model abstracts biological sequences as strings and structural information as designated position-pairs. It augments a fixed pairwise string score, defined by a fixed non-gap symbol-pair scoring rule and fixed affine gap penalties, with a binary overlap score on designated position-pairs, which can be interpreted as a contact-map overlap score in structural applications. This yields a fixed-score, integer-valued optimization model suitable for complexity-theoretic analysis.
Under this formulation, we show that the decision problem MSA-S-DEC is NP-complete for a broad class of fixed pairwise string scoring schemes. We also show that NP-hardness persists even under the restriction that every designated position-pair set is nonempty and the pair-overlap threshold is strictly positive. For the associated scalarized optimization problem MSA-S-OPT(lambda) with any fixed rational constant lambda >= 1, we further show that, under the canonical unit scheme for the non-gap symbol-pair scoring rule, MSA-S-OPT(lambda) admits no polynomial-time approximation scheme (PTAS) even for two input strings (k = 2), unless P = NP.
These results establish a formal complexity-theoretic baseline for structure-informed multiple sequence alignment.
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