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2012, International Journal of Engineering Research and Technology (IJERT)
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3 pages
1 file
https://www.ijert.org/data-mining-on-dna-sequences-of-hepatitis-b-virus https://www.ijert.org/research/data-mining-on-dna-sequences-of-hepatitis-b-virus-IJERTV1IS10462.pdf Extraction of meaningful information from large experimental data sets is a key element in bioinformatics research. To identify genomic markers in Hepatitis B Virus (HBV) that are associated with Hepato Cellular Carcinoma (HCC) is one of the challenging task. An architectural framework of data mining which includes several molecular evolution analysis, clustering, feature selection, classifier learning, and classification algorithms. In the feature selection process, genetic markers are selected based on information gain theory for further classifier learning. Then, meaningful rules are learned by the algorithm is called the Rule Learning evolutionary algorithm. Also, a classification method by nonlinear integral has been developed. Good performance of this method comes from the use of the fuzzy measure and the relevant nonlinear integral. The non-additively of the fuzzy measure reflects the importance of the feature attributes as well as their interactions.
IEEE/ACM Transactions on Computational Biology and Bioinformatics, 2000
Extraction of meaningful information from large experimental datasets is a key element of bioinformatics research. One of the challenges is to identify genomic markers in Hepatitis B Virus (HBV) that are associated with HCC (liver cancer) development by comparing the complete genomic sequences of HBV among patients with HCC and those without.
Computer Science & IT Research Journal, 2021
The hepatitis B virus causes a liver infection called hepatitis B (HBV). It might be severe and go away on its own. Some kinds, however, can be persistent, leading to cirrhosis and liver cancer. HBV can be transmitted to others without the individual being aware of it; some persons have no symptoms, while others only have the first infection, which later resolves. Others develop a chronic illness as a result of their condition. In chronic cases, the virus attacks the liver for an extended period of time without being detected, causing irreparable liver damage. The manual approach has a high number of errors due to human decision-making, and visual screening is time-consuming, tiresome, and costly in terms of manpower. To predict the occurrence of Hepatitis virus (HBV), this research project thesis suggested an algorithm; Artificial Neural Network (ANN), and genetic algorithm (GA). To develop, evaluate and validate the performance of the model developed using ANN. Medical records of ...
Advances in Engineering and Intelligence Systems, 2023
Hepatitis is a disease that occurs in all ages and levels of the life of people. Hepatitis disease does not only have a deadly effect, but its identification, diagnosis, and early detection can help to treat the disease in the body and care and maintenance. Hepatitis has a variety of types that this type of study deals with hepatitis B. In this research, a new classification approach is developed for the diagnosis of hepatitis B disease using an optimized deep-learning method. This method, which involves the automatic extraction of features with minimum redundancy and minimum possible dimensions, and then modeling data from a low to a high level, can be used as a data mining method in the discovery and extraction of knowledge in computer-aided medical systems to be employed. Also, a series of evaluation criteria, including accuracy, to compare with the previous methods and to ensure the proposed approach is presented.
2013
Data mining techniques are widely used in classification and prediction in the field of bioinformatics to analyze biomedical data. The purpose of the study is to investigate and compare (7) different classification algorithms namely, Naive Bayes, Naive Bayes updatable, FT Tree, KStar, J48, LMT, and Neural network for analyzing Hepatitis prognostic data. The results of the classification are accuracy and time. The study concludes that the Naive Bayes classification performance is better than other classification techniques for hepatitis dataset.
2021
BackgroundLiver cancer is often associated with hepatitis B infection, and there is a progression from chronic hepatitis to hepatocellular carcinoma. The replication of the virus affects the cell cycle of the host. Many oncogenes that express themselves in the formation of proteins can be highly expressed. A microarray technique can be used as a high throughput measure to determine gene expression in the mechanism of hepatoma progression. However, it has lacks important information on the potential genes to trigger the disease. The information is about the produced mRNA and has a difference to the normal cell line as control. ResultsThis study aimed to identify the potential genes that could be used as predictors to detect liver cancer using a heuristic algorithm, simulated annealing optimization. The basic idea of this algorithm was to overcome the combinatorial problem using probability values to select the significant features as a predictor for the classifier model in the repres...
Technology transfer: fundamental principles and innovative technical solutions
The article proposes an algorithm based on intelligent methods for the early diagnosis of hepatocellular carcinoma (HCC), known as liver cancer, which is rated third cause of cancer deaths in the world. Initial diagnosis of HСC is based on laboratory studies, computer tomography and X-ray examination. However, in some cases, identifying cancerous tissues as similar non-cancerous tissues (cirrhotic tissues and normal tissues) made it necessary to perform gene analysis for the diagnosis. To predict HCC based on such numerous, diverse and heterogeneous unstructured data, preference is given to the method of artificial intelligence, i.e., machine learning. It shows the possibility of applying machine learning methods to solve the problem of accurate identification of HCC due to the compatibility of HCC tissues with identical CwoHCC non-cancerous tissues. The technology of gene pair profiling using relevant peer databases is described and the Within-Sample Relative Expression Orderings (...
IJRCAR, 2014
The Data mining is the process of finding correlations or patterns among dozens of fields in large relational databases. Clustering algorithm used to find groups of objects such that the objects in a group will be similar (or related) to one another and different from (or unrelated to) the objects in other groups. This paper comprises of two databases such as normal liver cells and cancer affected cells. Each character variables are assigned numeric number and its corresponding pair combination of sequence are represented in a graph. The performance is analysed based on the different no of instances and confidence in gene data set. The occurrences for modified data and original data are compared together to find cluster structure.
TJPRC, 2013
The prediction of hepatitis C virus (HCV) is a significant and tedious task in medicine. The healthcare environment is generally perceived as being ‘information rich’ yet ‘knowledge poor’. There is a wealth of data available within the healthcare system. However, there is a lack of effective analysis tools to discover hidden relationships and trends in data. Knowledge discovery and data mining have found numerous applications in business and scientific domain. Valuable knowledge can be discovered from application of data mining techniques in healthcare system. Using medical profile such as age, sex, residence and (ALT, AST) enzyme blood tests it can predict the likelihood of patients getting HCV infection. It enables significant knowledge, e.g. patterns, relationships between medical factors related to HCV, to be established. It can serve a training tool to train nurses and medical students to diagnose patients infected with HCV. This paper analyses the performance of various classification function techniques in data mining for predicting the infection with HCV from the HCV data set. These Techniques are Decision Trees, Naïve Bayes and Neural Network. Results show that each technique has its unique strength in realizing the objectives of the defined mining goals. Also the performance of three data mining techniques is compared using three data sets of different size.
Modelling, Measurement and Control C
Accurate diagnosis for decision making in medical diagnosis is solicited for further treatment planning. Intelligent decision support system plays an important role for medical diagnosis as well as early detection of disease to survive. In intelligent model machine learning is achieved by searching a pattern in the available data set. For this reason, data preprocessing plays a vital role for better learning and analysis process. This work uses UCI Hepatitis disease data set. Missing data are managed by using multiple imputation. Feature extraction is done using rough set (RS) based techniques. Data preprocessing was the main focus to achieve better classification accuracy. Incremental Back Propagation Learning Network (IBPLN) and Levenberg Marquardt (LM) algorithms are used as classifier. The parameters-CCR, Sensitivity, Specificity and AUC are considered for performance prediction.