TY - JOUR A1 - Vaddadi, Kavya A1 - Lin, Mao-Jan A1 - Majidian, Sina A1 - Mun, Taher A1 - Langmead, Ben T1 - Minimizing reference bias with an imputed personalized reference Y1 - 2026/03/05 JF - Genome Research JO - Genome Research DO - 10.1101/gr.280989.125 SP - gr.280989.125 UR - http://genome.cshlp.org/content/early/2026/03/05/gr.280989.125.abstract N2 - Pangenome indexes reduce reference bias in sequencing data analysis. However, bias can be reduced further by using a personalized reference, e.g. a diploid human reference constructed to match a donor individual's alleles. We present a new impute-first alignment framework that combines elements of genotype imputation and read alignment. We first genotype the individual using a subsample of the input reads. Using a reference panel and an efficient imputation algorithm, we impute a personalized diploid reference. Finally, we index the personalized reference and apply a read aligner (either linear or graph) to align the full read set to the personalized reference. On the HG002 sample, this framework achieves a higher variant-calling F1 score (99.77%) compared to the traditional linear aligner (99.62%) graph pangenome aligner (99.72%), and graph personalized-pangenome aligner (99.75%), with substantial reduction in the number of errors (38.73% compared to a linear aligner, 14.97% to a graph aligner, and 6.05% compared to a personalized graph). An imputed reference can have comparable efficiency to a pangenome reference, making it an overall advantageous choice for whole-genome DNA sequencing experiments. Advantages of our impute-first approach include that it (a) fully considers linkage disequilibrium and produces a phased diploid reference as an output, (b) produces accurate personalized references even from low-coverage data, (c) is compatible with both graph and linear reference representations and, achieving its highest variant-calling F1 accuracy using a standard linear aligner (BWA-MEM). ER -