Site icon IGNOU CORNER

What is numerical taxonomy? How is it used for classification?

Introduction

Taxonomy is the science of classification of organisms based on their characteristics and relationships. Traditional methods of taxonomy relied on morphological and physiological traits, which could be subjective. In contrast, numerical taxonomy offers a more objective and quantitative approach to classification. It uses mathematical and statistical tools to evaluate similarities and differences among organisms. This method has gained popularity, especially in microbial taxonomy, where phenotypic differences are often subtle.

What is Numerical Taxonomy?

Numerical taxonomy, also known as taxometrics or phenetics, is a method of classifying organisms based on a large number of characteristics using numerical and statistical techniques. It was first developed by Sokal and Sneath in the 1950s to bring objectivity and consistency to classification.

Definition:

Numerical taxonomy is defined as the process of grouping organisms based on the number and proportion of characters they share, with equal weight given to each characteristic.

Key Features of Numerical Taxonomy

Steps in Numerical Taxonomy

The process of numerical taxonomy generally includes the following steps:

1. Selection of Operational Taxonomic Units (OTUs)

OTUs are the individual organisms or strains that are being compared and classified. Each OTU is treated as a separate unit in the analysis.

2. Character Selection

A large number (often over 50-100) of morphological, physiological, biochemical, or genetic traits are selected. These traits must be clearly defined and consistently measurable.

3. Data Coding

The characteristics are converted into numerical codes, usually binary (0 or 1) or multistate (e.g., 0, 1, 2), depending on the type of trait.

4. Similarity Coefficient Calculation

Statistical formulas such as Simple Matching Coefficient (SMC) or Jaccard Coefficient are used to calculate the degree of similarity between OTUs.

5. Cluster Analysis

Using the similarity matrix, clustering methods (like UPGMA – Unweighted Pair Group Method with Arithmetic Mean) are applied to group the OTUs based on their overall similarity.

6. Dendrogram Construction

The final output is a dendrogram that visually represents the relationships among the OTUs. Organisms that are closely related appear in the same cluster.

Applications of Numerical Taxonomy

Advantages of Numerical Taxonomy

Limitations

Conclusion

Numerical taxonomy is a powerful tool for the objective and systematic classification of organisms, especially microorganisms. It allows researchers to group organisms based on a wide array of characteristics, leading to more accurate and reproducible results. While it has limitations, its integration with molecular techniques is making it increasingly relevant in modern taxonomy.

Exit mobile version