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Predicting Heart Failure. Группа авторовЧитать онлайн книгу.

Predicting Heart Failure - Группа авторов


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understand language have been developed; with the help of image processing techniques, systems close to human vision have been developed; systems that imitate human learning, systems that extract information, systems that establish connections have been developed; and studies that reveal abnormal situations have been conducted.

      The main reason artificial intelligence-powered solutions have come to the fore is their ability to exploit many advantages of information technologies. Cheaper storage units, the increase in the capacities of the processing units, and advances in artificial intelligence algorithms make the field more popular every day. The cheaper storage units and the increase in their capacity have enabled more patient data to be stored. The increase in capacity and speed in processor units makes it possible to analyze data in a way not possible in the past. In fact, data collection and transfer possibilities from remote units have increased due to the developments in network technologies. All developments favor artificial intelligence and data science, and many jobs have become fulfilled with the help of artificial intelligence and data science.

      The developments have also contributed to artificial intelligence programming skills. With artificial intelligence, it has become possible to solve many problems that could not be solved with classical programming skills, and while complex data relationships cannot be solved with classical methods, recently relationships between data have become easily inferred.

      One of the areas most supported by artificial intelligence is computer-aided decision making, thanks to its various capabilities, notably diagnosis and prediction. Artificial intelligence-based diagnostic systems can be seen as an example of a non-invasive procedure, because there is no interference with the body in artificial intelligence supported clinical decision support systems, in which expert systems make decisions based on both expert opinions and machine learning systems’ modeling from past case examples. These systems, which are sometimes used separately, are used together in some places. With the increase in the studies on artificial intelligence, its subfields have emerged. There are many artificial intelligence subdomains, each with different characteristics. Among these subareas, machine learning, deep learning, expert systems, and image processing in particular provide auxiliary features in computer-aided decision making.

      1.5.1.1 Expert Systems

      1.5.1.2 Machine Learning

      1.5.1.3 Deep Learning

      Deep learning is a sub-branch of machine learning. It is also recognized as the most powerful alternative to machine learning. It can perform more complex operations with fewer data. In addition, while feature selection is performed manually in traditional machine learning algorithms, this process is automatic in deep learning. The working principle of deep learning algorithms is the working principle of the brain. It is based on densely multilayered neural networks, but constrained Boltzman machines and probabilistic graph models are also associated with deep learning. These are the methods that work with large amounts of data and reach the final output by further improving the results in each layer. It is supervised, unsupervised, or semi-supervised in terms of the type of education. Its prominent algorithms are convolutional neural network (CNN) and recurrent neural network (RNN). Deep learning models have found use in many areas from natural language processing to image processing.

      1.5.1.4 Image Processing

      1.5.2 Artificial Intelligence Supported HF Diagnostic Studies

      1.6 Machine Learning Supported Diagnosis

      Invasive and non-invasive methods offer a wealth of diagnostic information. However, the interpretation of the available information can only be possible with the help of a physician. The increase in heart patients and the increase in patient data in parallel make it difficult to evaluate the data and extract information from them day by day. The intersection of the symptoms of heart disease with the symptoms of other diseases also makes the diagnosis of the disease a difficult problem. For this reason, there is a need to evaluate the data obtained with the help of invasive and non-invasive techniques with intelligent analysis tools in order to increase the diagnostic accuracy. Artificial intelligence


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