Abstract

Chest auscultation is a widely used method in the diagnosis of lung diseases. However, the interpretation of lung sounds is a subjective task and disagreements arise. New technological developments like the use of visSual representation of sounds through spectrograms could improve the agreement when classifying lung sounds, but this is not yet known. In this study, we tested if the use of spectrograms improves the agreement when classifying wheezes and crackles. To do this, we asked twenty-three medical students at UiT the Arctic University of Norway to classify 30 lung sounds recordings for the presence of wheezes and crackles. The sample contained 15 normal recordings and 15 with wheezes or crackles. The students classified the recordings in a random order twice. First sound only, then sound with spectrograms. We calculated kappa values for the agreement between each student and the expert classification with and without display of spectrograms and tested for significant improvement between these two coefficients. We also calculated Fleiss kappa for the 23 observers with and without the spectrogram. In an individual analysis comparing each student to an expert annotated reference standard we found that 13 out of 23 students had a positive change in kappa when classifying wheezes with the help of spectrograms. When classifying crackles 16 out of 23 showed improvement when spectrograms were used. In a group analysis we observed that Fleiss kappa values were k = 0.51 and k = 0.56 (p = 0.63) for classifying wheezes without and with spectrograms. For crackles, these values were k = 0.22 and k = 0.40 (p = <0.01) in the same order. Thus, we conclude that the use of spectrograms had a positive impact on the inter-rater agreement and the agreement with experts. We observed a higher improvement in the classification of crackles compared to wheezes.

Highlights

  • Chest auscultation is a widely used method in the diagnosis of lung diseases

  • Since stethoscopes are designed for individual listening it is not possible to share the sounds with other colleagues for discussion

  • A spectrogram is a visual representation of the spectrum of frequencies of a signal as it varies with time

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Summary

Introduction

Chest auscultation is a widely used method in the diagnosis of lung diseases. the interpretation of lung sounds is a subjective task and disagreements arise. We tested if the use of spectrograms improves the agreement when classifying wheezes and crackles. Disagreement between health professionals arises when classifying lung sounds and the reliability in the classification of wheezes and crackles has been found to be moderate at best[2,3,4,5,6]. The inability of the traditional stethoscope for collective hearing creates situations where patients with an uncommon heart or lung sound will be repetitively auscultated by numerous students who are only interested in “the sound” This might have an impact on the patients making them feel as objects[9]. The aim of this study is to explore how the use of spectrograms affects the agreement between medical students and a panel of experts and the agreement within a group of students in classifying lung sounds

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