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Proposing an Early Diagnostic Deep Learning Approach to Detect Lung Cancer from Short-Breaths

机译:提出一种早期诊断性深度学习方法以从呼吸中检测出肺癌

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This paper proposes a deep learning approach that might help to diagnose lung cancer at an early stage. A deep neural network (DNN) will be trained via classification and clustering to predict disparity in the dimensions of the diaphragm. The model will use a rain forest algorithm (RFA) for the initial classification of the clippings. A deep clustering that uses a feed-forward attribute will be implemented for the second-half of the hidden layers. This model will be able to identify short breaths thereby resulting in the early diagnosis of lung cancer. The change in the breathing habits of individual will be highlighted by the trained model further prompting the individual to take remedial actions at a much early phase. The strategy behind the model is creating a scope in the form of an alert via an application or device with the integration of IoT platforms that can be later developed into a business model.
机译:本文提出了一种深度学习方法,该方法可能有助于早期诊断肺癌。将通过分类和聚类训练深度神经网络(DNN),以预测膜片尺寸的差异。该模型将使用雨林算法(RFA)对剪报进行初始分类。对于下半部分隐藏层,将实现使用前馈属性的深度聚类。该模型将能够识别呼吸,从而可以早期诊断出肺癌。训练后的模型将突出个人呼吸习惯的变化,从而进一步促使个人在很早的阶段采取补救措施。该模型背后的策略是通过警报或应用程序或设备将物联网平台集成到一起,然后再将其开发为业务模型来创建范围。

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