Tucuxi-BLAST: Enabling fast and accurate record linkage of large-scale health-related administrative databases through a DNA-encoded approach

Author:

Araujo José Deney1,Santos-e-Silva Juan Carlo1ORCID,Costa-Martins André Guilherme12,Sampaio Vanderson34,de Castro Daniel Barros5,de Souza Robson F.6ORCID,Giddaluru Jeevan1,Ramos Pablo Ivan P.7ORCID,Pita Robespierre7,Barreto Mauricio L.7ORCID,Barral-Netto Manoel7ORCID,Nakaya Helder I.1248ORCID

Affiliation:

1. Department of Clinical and Toxicological Analyses, Universidade de São Paulo, São Paulo, SP, Brazil

2. Scientific Platform Pasteur USP, São Paulo, SP, Brazil

3. Fundação de Medicina Tropical Dr. Heitor Vieira Dourado, Manaus, Brazil

4. Instituto Todos pela Saúde, São Paulo, SP, Brazil

5. Fundação de Vigilância em Saúde do Amazonas, Manaus, Brazil

6. Departamento de Microbiologia, Universidade de São Paulo, São Paulo, Brazil

7. Oswaldo Cruz Foundation, Salvador, Brazil

8. Hospital Israelita Albert Einstein, São Paulo, SP, Brazil

Abstract

Background Public health research frequently requires the integration of information from different data sources. However, errors in the records and the high computational costs involved make linking large administrative databases using record linkage (RL) methodologies a major challenge. Methods We present Tucuxi-BLAST, a versatile tool for probabilistic RL that utilizes a DNA-encoded approach to encrypt, analyze and link massive administrative databases. Tucuxi-BLAST encodes the identification records into DNA. BLASTn algorithm is then used to align the sequences between databases. We tested and benchmarked on a simulated database containing records for 300 million individuals and also on four large administrative databases containing real data on Brazilian patients. Results Our method was able to overcome misspellings and typographical errors in administrative databases. In processing the RL of the largest simulated dataset (200k records), the state-of-the-art method took 5 days and 7 h to perform the RL, while Tucuxi-BLAST only took 23 h. When compared with five existing RL tools applied to a gold-standard dataset from real health-related databases, Tucuxi-BLAST had the highest accuracy and speed. By repurposing genomic tools, Tucuxi-BLAST can improve data-driven medical research and provide a fast and accurate way to link individual information across several administrative databases.

Funder

Brazilian agency Fundação de Amparo à Pesquisa do Estado de São Paulo-FAPESP

CAPES

FAPESP

Publisher

PeerJ

Subject

General Agricultural and Biological Sciences,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

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