Paper spray mass spectrometry combined with machine learning as a rapid diagnostic for chronic kidney disease.
Igor PereiraJindar N S SbotoJason L RobinsonChris G GillPublished in: The Analyst (2024)
A new analytical method for chronic kidney disease (CKD) detection utilizing paper spray mass spectrometry (PS-MS) combined with machine learning is presented. The analytical protocol is rapid and simple, based on metabolic profile alterations in urine. Anonymized raw urine samples were deposited (10 μL each) onto pointed PS-MS sample strips. Without waiting for the sample to dry, 75 μL of acetonitrile and high voltage were applied to the strips, using high resolution mass spectrometry measurement (15 s per sample) with polarity switching to detect a wide range of metabolites. Random forest machine learning was used to classify the resulting data. The diagnostic performance for the potential diagnosis of CKD was evaluated for accuracy, sensitivity, and specificity, achieving results >96% for the training data and >91% for validation and test data sets. Metabolites selected by the classification model as up- or down-regulated in healthy or CKD samples were tentatively identified and in agreement with previously reported literature. The potential utilization of this approach to discriminate albuminuria categories (normo, micro, and macroalbuminuria) was also demonstrated. This study indicates that PS-MS combined with machine learning has the potential to be used as a rapid and simple diagnostic tool for CKD.
Keyphrases
- chronic kidney disease
- machine learning
- mass spectrometry
- liquid chromatography
- high resolution mass spectrometry
- big data
- end stage renal disease
- ms ms
- loop mediated isothermal amplification
- gas chromatography
- artificial intelligence
- tandem mass spectrometry
- electronic health record
- high performance liquid chromatography
- ultra high performance liquid chromatography
- capillary electrophoresis
- high resolution
- deep learning
- simultaneous determination
- multiple sclerosis
- systematic review
- human health
- randomized controlled trial
- climate change
- data analysis
- virtual reality
- risk assessment