Utilizing Big Data to Identify Tiny Toxic Components: <i>Digitalis</i>
The botanical genus <i>Digitalis</i> is equal parts colorful, toxic, and medicinal, and its bioactive compounds have a long history of therapeutic use. However, with an extremely narrow therapeutic range, even trace amounts of <i>Digitalis</i> can cause adverse effects. Using...
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MDPI AG
2021-08-01
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Online Access: | https://www.mdpi.com/2304-8158/10/8/1794 |
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author | Elizabeth Sage Hunter Robert Literman Sara M. Handy |
author_facet | Elizabeth Sage Hunter Robert Literman Sara M. Handy |
author_sort | Elizabeth Sage Hunter |
collection | DOAJ |
description | The botanical genus <i>Digitalis</i> is equal parts colorful, toxic, and medicinal, and its bioactive compounds have a long history of therapeutic use. However, with an extremely narrow therapeutic range, even trace amounts of <i>Digitalis</i> can cause adverse effects. Using chemical methods, the United States Food and Drug Administration traced a 1997 case of <i>Digitalis</i> toxicity to a shipment of <i>Plantago</i> (a common ingredient in dietary supplements marketed to improve digestion) contaminated with <i>Digitalis lanata</i>. With increased accessibility to next generation sequencing technology, here we ask whether this case could have been cracked rapidly using shallow genome sequencing strategies (e.g., genome skims). Using a modified implementation of the Site Identification from Short Read Sequences (SISRS) bioinformatics pipeline with whole-genome sequence data, we generated over 2 M genus-level single nucleotide polymorphisms in addition to species-informative single nucleotide polymorphisms. We simulated dietary supplement contamination by spiking low quantities (0–10%) of <i>Digitalis</i> whole-genome sequence data into a background of commonly used ingredients in products marketed for “digestive cleansing” and reliably detected Digitalis at the genus level while also discriminating between <i>Digitalis</i> species. This work serves as a roadmap for the development of novel DNA-based assays to quickly and reliably detect the presence of toxic species such as <i>Digitalis</i> in food products or dietary supplements using genomic methods and highlights the power of harnessing the entire genome to identify botanical species. |
first_indexed | 2024-03-10T08:48:59Z |
format | Article |
id | doaj.art-ae16293c2a5544cbb934eb80bf87ff80 |
institution | Directory Open Access Journal |
issn | 2304-8158 |
language | English |
last_indexed | 2024-03-10T08:48:59Z |
publishDate | 2021-08-01 |
publisher | MDPI AG |
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series | Foods |
spelling | doaj.art-ae16293c2a5544cbb934eb80bf87ff802023-11-22T07:38:54ZengMDPI AGFoods2304-81582021-08-01108179410.3390/foods10081794Utilizing Big Data to Identify Tiny Toxic Components: <i>Digitalis</i>Elizabeth Sage Hunter0Robert Literman1Sara M. Handy2Center for Food Safety and Applied Nutrition, Office of Regulatory Science, U.S. Food and Drug Administration, College Park, MD 20740, USACenter for Food Safety and Applied Nutrition, Office of Regulatory Science, U.S. Food and Drug Administration, College Park, MD 20740, USACenter for Food Safety and Applied Nutrition, Office of Regulatory Science, U.S. Food and Drug Administration, College Park, MD 20740, USAThe botanical genus <i>Digitalis</i> is equal parts colorful, toxic, and medicinal, and its bioactive compounds have a long history of therapeutic use. However, with an extremely narrow therapeutic range, even trace amounts of <i>Digitalis</i> can cause adverse effects. Using chemical methods, the United States Food and Drug Administration traced a 1997 case of <i>Digitalis</i> toxicity to a shipment of <i>Plantago</i> (a common ingredient in dietary supplements marketed to improve digestion) contaminated with <i>Digitalis lanata</i>. With increased accessibility to next generation sequencing technology, here we ask whether this case could have been cracked rapidly using shallow genome sequencing strategies (e.g., genome skims). Using a modified implementation of the Site Identification from Short Read Sequences (SISRS) bioinformatics pipeline with whole-genome sequence data, we generated over 2 M genus-level single nucleotide polymorphisms in addition to species-informative single nucleotide polymorphisms. We simulated dietary supplement contamination by spiking low quantities (0–10%) of <i>Digitalis</i> whole-genome sequence data into a background of commonly used ingredients in products marketed for “digestive cleansing” and reliably detected Digitalis at the genus level while also discriminating between <i>Digitalis</i> species. This work serves as a roadmap for the development of novel DNA-based assays to quickly and reliably detect the presence of toxic species such as <i>Digitalis</i> in food products or dietary supplements using genomic methods and highlights the power of harnessing the entire genome to identify botanical species.https://www.mdpi.com/2304-8158/10/8/1794dietary supplementsgenome skimming<i>Digitalis</i>toxic botanicals |
spellingShingle | Elizabeth Sage Hunter Robert Literman Sara M. Handy Utilizing Big Data to Identify Tiny Toxic Components: <i>Digitalis</i> Foods dietary supplements genome skimming <i>Digitalis</i> toxic botanicals |
title | Utilizing Big Data to Identify Tiny Toxic Components: <i>Digitalis</i> |
title_full | Utilizing Big Data to Identify Tiny Toxic Components: <i>Digitalis</i> |
title_fullStr | Utilizing Big Data to Identify Tiny Toxic Components: <i>Digitalis</i> |
title_full_unstemmed | Utilizing Big Data to Identify Tiny Toxic Components: <i>Digitalis</i> |
title_short | Utilizing Big Data to Identify Tiny Toxic Components: <i>Digitalis</i> |
title_sort | utilizing big data to identify tiny toxic components i digitalis i |
topic | dietary supplements genome skimming <i>Digitalis</i> toxic botanicals |
url | https://www.mdpi.com/2304-8158/10/8/1794 |
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