4.2 Review

Understanding the ramifications of quantitative ordinal scales on accuracy of estimates of disease severity and data analysis in plant pathology

Journal

TROPICAL PLANT PATHOLOGY
Volume 47, Issue 1, Pages 58-73

Publisher

SPRINGER
DOI: 10.1007/s40858-021-00446-0

Keywords

Nearest percent estimates; Plant disease assessment; Scale design; Calculation of the interval range

Categories

Funding

  1. Ministry of Science and Technology of Taiwan, R.O.C. [MOST 109-2313-B-005-036]

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The study focuses on the nature and effects of quantitative ordinal scales used in plant disease assessment, emphasizing their relative lack of accuracy. The authors argue that scale design and structure have significant implications for data analysis results, in order to minimize inaccuracy and ensure sufficient power when using quantitative ordinal scale data.
The severity of plant diseases, traditionally defined as the proportion of the plant tissue exhibiting symptoms, is a key quantitative variable to know for many diseases but is prone to error. Plant pathologists face many situations in which the measurement by nearest percent estimates (NPEs) of disease severity is time-consuming or impractical. Moreover, rater NPEs of disease severity are notoriously variable. Therefore, NPEs of disease may be of questionable value if severity cannot be determined accurately and reliably. In such situations, researchers have often used a quantitative ordinal scale of measurement-often alleging the time saved, and the ease with which the scale can be learned. Because quantitative ordinal disease scales lack the resolution of the 0 to 100% scale, they are inherently less accurate. We contend that scale design and structure have ramifications for the resulting analysis of data from the ordinal scale data. To minimize inaccuracy and ensure that there is equivalent statistical power when using quantitative ordinal scale data, design of the scales can be optimized for use in the discipline of plant pathology. In this review, we focus on the nature of quantitative ordinal scales used in plant disease assessment. Subsequently, their application and effects will be discussed. Finally, we will review how to optimize quantitative ordinal scales design to allow sufficient accuracy of estimation while maximizing power for hypothesis testing.

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