Author:
Raghavendra U.,Pham The-Hanh,Gudigar Anjan,Vidhya V.,Rao B. Nageswara,Sabut Sukanta,Wei Joel Koh En,Ciaccio Edward J.,Acharya U. Rajendra
Abstract
AbstractBrain stroke is an emergency medical condition which occurs mainly due to insufficient blood flow to the brain. It results in permanent cellular-level damage. There are two main types of brain stroke, ischemic and hemorrhagic. Ischemic brain stroke is caused by a lack of blood flow, and the haemorrhagic form is due to internal bleeding. The affected part of brain will not function properly after this attack. Hence, early detection is important for more efficacious treatment. Computer-aided diagnosis is a type of non-invasive diagnostic tool which can help in detecting life-threatening disease in its early stage by utilizing image processing and soft computing techniques. In this paper, we have developed one such model to assess intracerebral haemorrhage by employing non-linear features combined with a probabilistic neural network classifier and computed tomography (CT) images. Our model achieved a maximum accuracy of 97.37% in discerning normal versus haemorrhagic subjects. An intracerebral haemorrhage index is also developed using only three significant features. The clinical and statistical validation of the model confirms its suitability in providing for improved treatment planning and in making strategic decisions.
Publisher
Springer Science and Business Media LLC
Subject
General Earth and Planetary Sciences,General Environmental Science
Reference62 articles.
1. Al-Mufti F, Thabet AM, Singh T, El-Ghanem M, Amuluru K, Gandhi CD (2018) Clinical and radiographic predictors of intracerebral hemorrhage outcome. Interv Neurol 7:118–136
2. Wijman CAC, Venkatasubramanian C, Bruins S, Fischbein N, Schwartz N (2010) Utility of early MRI in the diagnosis and management of acute spontaneous intracerebral hemorrhage. Cerebrovasc Dis 30:456–463
3. Gorelick PB (2019) The global burden of stroke: persistent and disabling. Lancet Neurol 18(5):417–418
4. Krishnan K, Mukhtar SF, Lingard J, Houlton A, Walker E, Jones T, Sprigg N, Cala LA, Becker JL, Dineen RA, Koumellis P (2015) Performance characteristics of methods for quantifying spontaneous intracerebral haemorrhage: data from the Efficacy of Nitric Oxide in Stroke (ENOS) trial. J Neurol Neurosurg Psychiatry 86(11):258–1266
5. Patel A, Schreuder FH, Klijn CJ, Prokop M, van Ginneken B, Marquering HA, Roos YB, Baharoglu MI, Meijer FJ, Manniesing R (2019) Intracerebral haemorrhage segmentation in non-contrast CT. Sci Rep 9(1):1–11
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