Title :
Noninvasive Intracranial Hypertension Detection Utilizing Semisupervised Learning
Author :
Sunghan Kim ; Hamilton, R. ; Pineles, S. ; Bergsneider, M. ; Xiao Hu
Author_Institution :
Dept. of Eng., East Carolina Univ., Greenville, NC, USA
Abstract :
Intracranial pressure (ICP) monitoring is an established clinical practice in managing patients with risk of acute ICP elevation although the clinically accepted way of measuring ICP remains invasive. However, the invasive nature of ICP measurement obviates its application in many clinical circumstances such as diagnosis of idiopathic intracranial hypertension (IH). We propose a noninvasive diagnostic tool for IH based on the morphological analysis of cerebral blood flow velocity waveforms. We mainly compare two types of IH detection methods: one based on the traditional supervised learning approach and the other based on the semisupervised learning approach. Our simulation results demonstrate that the predictive accuracy (area under the curve) of the semisupervised IH detection method can be as high as 92% while that of the supervised IH detection method is only around 82%. It should be noted that the predictive accuracy of the pulsatility index (PI)-based IH detection method is as low as 59%. Although the predictive accuracy is a widely used accuracy measurement, it does not consider clinical consequences of necessary and unnecessary treatments. For this reason, we have adopted the decision curve analysis to address this issue. The decision curve analysis results show that the semisupervised IH detection method is not only more accurate, but also clinically more useful than the supervised IH detection method or the PI-based IH detection method.
Keywords :
biomedical measurement; haemodynamics; learning (artificial intelligence); medical diagnostic computing; patient diagnosis; patient monitoring; ICP measurement; cerebral blood flow velocity waveforms; decision curve analysis; idiopathic intracranial hypertension; intracranial pressure monitoring; morphological analysis; noninvasive intracranial hypertension detection; patient diagnosis; predictive accuracy; pulsatility index-based IH detection method; semisupervised IH detection method; semisupervised learning; Accuracy; Educational institutions; Iterative closest point algorithm; Kernel; Labeling; Monitoring; Semisupervised learning; Cerebral blood flow velocity (CBFV); decision curve analysis; intracranial hypertension (IH); intracranial pressure (ICP); semisupervised learning; spectral regression kernel discriminant analysis (SRKDA); transcranial Doppler (TCD); Adult; Aged; Aged, 80 and over; Algorithms; Artificial Intelligence; Cerebrovascular Circulation; Female; Humans; Intracranial Hypertension; Intracranial Pressure; Male; Middle Aged; Signal Processing, Computer-Assisted; Ultrasonography, Doppler, Transcranial;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2012.2227477