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NEURAL NETWORK MODEL FOR AUTOMATED SYSTEM TO DIAGNOSE BLOOD CLOTS

机译:用于诊断血块的自动化系统的神经网络模型

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We proposed an automated system for diagnosis of blood clots that works based on user input data as symptoms. We selected 55 symptoms indicating possible blood clot symptoms. The user may input any of these symptoms through cell phone facility or any input device and find possible blood clot as quickly as possible. In this paper a MATLAB neural network model 'nftool' is used to diagnose blood clot diseases. The accuracy of the recognition of the symptom after repeated trainings was 93.75%. For better results we need to train the neural network system with more data. The success of this model will be to enhance patient care by saving a lot of time and money for the patient, while at the same time offering the opportunity to receive an appropriate diagnosis for their disease.
机译:我们提出了一种自动诊断血凝块的系统,该系统基于用户输入的数据作为症状。我们选择了55个症状,这些症状表明可能存在血液凝块症状。用户可以通过手机设备或任何输入设备输入这些症状中的任何一种,并尽快找到可能的血块。在本文中,使用MATLAB神经网络模型'nftool'诊断血液凝块疾病。反复训练后症状识别的准确率为93.75%。为了获得更好的结果,我们需要使用更多数据来训练神经网络系统。该模型的成功将通过为患者节省大量时间和金钱来增强患者的护理,同时提供机会为他们的疾病进行适当的诊断。

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