Electronic Nose Sensor Drift Affects Diagnostic Reliability and Accuracy of Disease-Specific Algorithms.
Sofie BoschRenée X de MenezesSuzanne PeesDion J WintjensMargien SeinenGerd BoumaJohan KuyvenhovenPieter C F StokkersTim G J de MeijNanne K H De BoerPublished in: Sensors (Basel, Switzerland) (2022)
Sensor drift is a well-known disadvantage of electronic nose (eNose) technology and may affect the accuracy of diagnostic algorithms. Correction for this phenomenon is not routinely performed. The aim of this study was to investigate the influence of eNose sensor drift on the development of a disease-specific algorithm in a real-life cohort of inflammatory bowel disease patients (IBD). In this multi-center cohort, patients undergoing colonoscopy collected a fecal sample prior to bowel lavage. Mucosal disease activity was assessed based on endoscopy. Controls underwent colonoscopy for various reasons and had no endoscopic abnormalities. Fecal eNose profiles were measured using Cyranose 320®. Fecal samples of 63 IBD patients and 63 controls were measured on four subsequent days. Sensor data displayed associations with date of measurement, which was reproducible across all samples irrespective of disease state, disease activity state, disease localization and diet of participants. Based on logistic regression, corrections for sensor drift improved accuracy to differentiate between IBD patients and controls based on the significant differences of six sensors (p = 0.004; p < 0.001; p = 0.001; p = 0.028; p < 0.001 and p = 0.005) with an accuracy of 0.68. In this clinical study, short-term sensor drift affected fecal eNose profiles more profoundly than clinical features. These outcomes emphasize the importance of sensor drift correction to improve reliability and repeatability, both within and across eNose studies.
Keyphrases
- disease activity
- end stage renal disease
- rheumatoid arthritis
- systemic lupus erythematosus
- ejection fraction
- machine learning
- patients undergoing
- prognostic factors
- clinical trial
- deep learning
- peritoneal dialysis
- type diabetes
- physical activity
- patient reported outcomes
- juvenile idiopathic arthritis
- skeletal muscle
- adipose tissue
- data analysis
- ultrasound guided
- low cost