Title :
Analysis of Tidal Breathing Flow Volume Loops for Automated Lung-Function Diagnosis in Infants
Author :
Leonhardt, Steffen ; Ahrens, Peter ; Kecman, Vojislav
Author_Institution :
Dept. of Med. Inf. Technol., RWTH Aachen Univ., Aachen, Germany
Abstract :
Lung-function analysis in the age group below 5 years has not yet found its way into clinical routine. One possible candidate for routine lung testing in this age group is the analysis of tidal breathing flow-volume (TBFV) loops, a technique that has not yet proven to be capable of detecting obstructive and other lung disorders at an early stage. We present a new set of mathematical features useful to analyze TBFV loops. These new features attempt to describe more complex properties of the loops, thus imitating medical judgment of the curves (e.g., “round,” “triangular,” etc.) in a “linguistic” manner. Furthermore, we introduce support vector machines (SVMs) as a method for automated classification of diseases. In a retrospective clinical trial on 195 spontaneously breathing infants aged 3 to 24 months, the discriminant power of individual features and the overall diagnostic performance of SVMs is investigated and compared with the results obtained with traditional Bayes´ classifiers. We demonstrate that the proposed new features perform better in all examined disease groups and that depending on the disease, the classification error can be reduced by up to 50%. We conclude that TBFV loops may have a much stronger discriminant power than previously thought.
Keywords :
lung; paediatrics; patient diagnosis; pneumodynamics; support vector machines; infants; lung-function diagnosis; support vector machines; tidal breathing flow volume loops; Infant lung-function diagnosis; support vector machines (SVM); tidal breathing flow-volume (TBFV) loops; Algorithms; Bayes Theorem; Humans; Infant; Lung Diseases; Pattern Recognition, Automated; Respiratory Function Tests; Retrospective Studies; Signal Processing, Computer-Assisted; Tidal Volume;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2010.2046168