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Institution

Dijlah University College

EducationBaghdad, Iraq
About: Dijlah University College is a education organization based out in Baghdad, Iraq. It is known for research contribution in the topics: Perovskite (structure) & Computer science. The organization has 80 authors who have published 124 publications receiving 706 citations.

Papers published on a yearly basis

Papers
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Journal ArticleDOI
TL;DR: The effective and optimized neural computing and soft computing techniques to minimize the difficulties and issues in the feature set of lung cancer features are introduced.
Abstract: Today, most of the people are affected by lung cancer, mainly because of the genetic changes of the tissues in the lungs. Other factors such as smoking, alcohol, and exposure to dangerous gases can also be considered the contributory causes of lung cancer. Due to the serious consequences of lung cancer, the medical associations have been striving to diagnose cancer in its early stage of growth by applying the computer-aided diagnosis process. Although the CAD system at healthcare centers is able to diagnose lung cancer during its early stage of growth, the accuracy of cancer detection is difficult to achieve, mainly because of the overfitting of lung cancer features and the dimensionality of the feature set. Thus, this paper introduces the effective and optimized neural computing and soft computing techniques to minimize the difficulties and issues in the feature set. Initially, lung biomedical data were collected from the ELVIRA Biomedical Data Set Repository. The noise present in the data was eliminated by applying the bin smoothing normalization process. The minimum repetition and Wolf heuristic features were subsequently selected to minimize the dimensionality and complexity of the features. The selected lung features were analyzed using discrete AdaBoost optimized ensemble learning generalized neural networks, which successfully analyzed the biomedical lung data and classified the normal and abnormal features with great effectiveness. The efficiency of the system was then evaluated using MATLAB experimental setup in terms of error rate, precision, recall, G-mean, F-measure, and prediction rate.

96 citations

Journal ArticleDOI
24 Sep 2018
TL;DR: The predicted result is used to diagnose which age group and gender are mostly affected by diabetes, and the efficiency of two different clustering techniques suitable for the environment are compared.
Abstract: Diabetes mellitus is a serious health problem affecting the entire population all over the world for many decades. It is a group of metabolic disorder characterized by chronic disease which occurs due to high blood sugar, unhealthy foods, lack of physical activity and also hereditary. The sorts of diabetes mellitus are type1, type2 and gestational diabetes. The type1 appears during childhood and type2 diabetes develop at any age, mostly affects older than 40. The gestational diabetes occurs for pregnant women. According to the statistical report of WHO 79% of deaths occurred in people under the age of 60, due to diabetes. With a specific end goal to deal with the vast volume, speed, assortment, veracity and estimation of information a scalable environment is needed. Cloud computing is an interesting computing model suitable for accommodating huge volume of dynamic data. To overcome the data handling problems this work focused on Hadoop framework along with clustering technique. This work also predicts the occurrence of diabetes under various circumstances which is more useful for the human. This paper also compares the efficiency of two different clustering techniques suitable for the environment. The predicted result is used to diagnose which age group and gender are mostly affected by diabetes. Further some of the attributes such as hyper tension and work nature are also taken into consideration for analysis.

91 citations

Journal ArticleDOI
TL;DR: Conclusively, the reported SARS-CoV-2 S-RBD specific terpenes could serve as seeds for developing potent anti-COVID-19 drugs and could be used further in the fast-track drug development process to help curb CO VID-19.

87 citations

Journal ArticleDOI
TL;DR: The basis of the proposed analysis method is the connection between heart rate variability and oxygen saturation with d apnea events, which was transferred to a cloud-based system architecture to diagnose and warn the remote patients.

65 citations


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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20233
202211
202156
202025
201916
20185