2020
DOI: 10.1002/dta.2775
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A machine learning approach for handling big data produced by high resolution mass spectrometry after data independent acquisition of small molecules – Proof of concept study using an artificial neural network for sample classification

Abstract: Liquid chromatography coupled to high‐resolution mass spectrometry (HRMS) enables data independent acquisition (DIA) and untargeted screening. However, to avoid the handling of the resulting large dataset, most laboratories in that field still use targeted screening methods, which offer good sensitivity and specificity but are limited to known compounds. The promising field of machine learning offers new possibilities such as artificial neural networks that can be trained to classify large amounts of data. In … Show more

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Cited by 21 publications
(15 citation statements)
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“…A definitive distinction between a shallow and deep neural network is hard to define but around five to ten layers is the grey area between them, although with neural networks being produced that are hundreds of layers deep, the distinction may change in time. There are a range of software available to build neural networks such as R [73,74] , Matlab [75] and Python [6] . The most common method of building neural networks is in Python, using libraries such as PyTourch [73,74] and TensorFlow/Keras [6,9] .…”
Section: Neural Networkmentioning
confidence: 99%
See 1 more Smart Citation
“…A definitive distinction between a shallow and deep neural network is hard to define but around five to ten layers is the grey area between them, although with neural networks being produced that are hundreds of layers deep, the distinction may change in time. There are a range of software available to build neural networks such as R [73,74] , Matlab [75] and Python [6] . The most common method of building neural networks is in Python, using libraries such as PyTourch [73,74] and TensorFlow/Keras [6,9] .…”
Section: Neural Networkmentioning
confidence: 99%
“…There are a range of software available to build neural networks such as R [73,74] , Matlab [75] and Python [6] . The most common method of building neural networks is in Python, using libraries such as PyTourch [73,74] and TensorFlow/Keras [6,9] . PyTorch was developed by Facebook and is one of the most popular package alongside Googles TensorFlow [77] .…”
Section: Neural Networkmentioning
confidence: 99%
“…[ 23 ] Artificial neural network (ANN) is biologically system with an adaptive, self-learning, and computational construction simulating the functions of human neurons. [ 24 25 ] This technique can be trained to recognize and categorize complex patterns of diseases through an iterative learning process. Once proper training is achieved, the ANNs try to forecast with greater accuracy than traditional statistical techniques.…”
Section: Introductionmentioning
confidence: 99%
“…Arti cial Neural Networks (ANNs) is a supervised ML technique that imitates the tasks of biological human neurons based on a collection of connected nodes (input-hidden-output) called arti cial neurons (22,23). This method can be trained to recognize and categorize complex patterns of diseases and related healthcare events through an iterative learning process.…”
Section: Introductionmentioning
confidence: 99%