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. 1975 Nov;2(5):391–396. doi: 10.1128/jcm.2.5.391-396.1975

Discriminant analysis of antibiotic susceptibility as a means of bacterial identification.

G Darland
PMCID: PMC274197  PMID: 1194406

Abstract

This study shows that antibiotic susceptibility data can be used effectively in the presumptive identification of bacteria. Using 12 antibiotics and determining the zone sizes for each, 82% of the isolates considered were correctly identified without any other information. If the inability to distinguish between Escherichia coli and Shigella is disregarded, the percentage of correct identification is 92%. The method involves determining a set of discriminant functions and defining each taxon by a unique function. An unknown isolate is identified by evaluating each discriminant function and assigning the isolate to the taxon whose discriminant function has the largest value. A total of 468 isolates were examined. After eliminating the multiply resistant isolates, the remaining 369 isolates were used to determine the discriminant functions for the eight taxa considered.

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Selected References

These references are in PubMed. This may not be the complete list of references from this article.

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