Clinical malaria diagnosis: Rule-based classification statistical prototype
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Date
2016Author
Bbosa, Francis
Wesonga, Ronald
Jehopio, Peter Jegrace
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Show full item recordAbstract
In this study, we identified predictors of malaria, developed data mining, statistically
enhanced rule-based classification to diagnose malaria and developed an automated
system to incorporate the rules and statistical models. The aim of the study was to
develop a statistical prototype to perform clinical diagnosis of malaria given its adverse
effects on the overall healthcare, yet its treatment remains very expensive for the
majority of the patients to afford. Model validation was performed using records from
two hospitals (training and predictive datasets) to evaluate system sensitivity, specificity
and accuracy. The overall sensitivity of the rule-based classification obtained from
the predictive dataset was 70 % [68–74; 95 % CI] with a specificity of 58 % [54–66;
95 % CI]. The values for both sensitivity and specificity varied by age, generally showing
better performance for the data mining classification rules for the adult patients.
In summary, the proposed system of data mining classification rules provides better
performance for persons aged at least 18 years. However, with further modelling, this
system of classification rules can provide better sensitivity, specificity and accuracy
levels. In conclusion, using the system provides a preliminary test before confirmatory
diagnosis is conducted in laboratories.