information module
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2021 ◽  
Author(s):  
Xian Xian Liu ◽  
Gloria Li ◽  
Wei Lou ◽  
Juntao Gao ◽  
Simon Fong

[Background]: An emerging type of cancer treatment, known as cell immunotherapy, is gaining popularity over chemotherapy or other radia-tion therapy that causes mass destruction to our body. One favourable ap-proach in cell immunotherapy is the use of neoantigens as targets that help our body immune system identify the cancer cells from healthy cells. Neoan-tigens, which are non-autologous proteins with individual specificity, are generated by non-synonymous mutations in the tumor cell genome. Owing to its strong immunogenicity and lack of expression in normal tissues, it is now an important target for tumor immunotherapy. Neoantigens are some form of special protein fragments excreted as a by-product on the surface of cancer cells during the DNA mutation at the tumour. In cancer immunotherapies, certain neoantigens which exist only on cancer cells elicit our white blood cells (body's defender, anti-cancer T-cell) responses that fight the cancer cells while leaving healthy cells alone. Personalized cancer vaccines there-fore can be designed de novo for each individual patient, when the specific neoantigens are found to be relevant to his/her tumour. The vaccine which is usually coded in synthetic long peptides, RNA or DNA representing the neo-antigens trigger an immune response in the body to destroy the cancer cells (tumour). The specific neoantigens can be found by a complex process of biopsy and genome sequencing. Alternatively, modern technologies nowa-days tap on AI to predict the right neoantigen candidates using algorithms. However, determining the binding and non-binding of neoantigens on T-cell receptors (TCR) is a challenging computational task due to its very large search space. [Objective]: To enhance the efficiency and accuracy of traditional deep learning tools, for serving the same purpose of finding potential responsive-ness to immunotherapy through correctly predicted neoantigens. It is known that deep learning is possible to explore which novel neoantigens bind to T-cell receptors and which ones don't. The exploration may be technically ex-pensive and time-consuming since deep learning is an inherently computa-tional method. one can use putative neoantigen peptide sequences to guide personalized cancer vaccines design. [Methods]: These models all proceed through complex feature engineering, including feature extraction, dimension reduction and so on. In this study, we derived 4 features to facilitate prediction and classification of 4 HLA-peptide binding namely AAC and DC from the global sequence, and the LAAC and LDC from the local sequence information. Based on the patterns of sequence formation, a nested structure of bidirectional long-short term memory neural network called local information module is used to extract context-based features around every residue. Another bilstm network layer called global information module is introduced above local information module layer to integrate context-based features of all residues in the same HLA-peptide binding chain, thereby involving inter-residue relationships in the training process. introduced. [Results]: Finally, a more effective model is obtained by fusing the above two modules and 4 features matric, the method performs significantly better than previous prediction schemes, whose overall r-square increased to 0.0125 and 0.1064 on train and increased to 0.0782 and 0.2926 on test da-tasets. The RMSE for our proposed models trained decreased to approxi-mately 0.0745 and 1.1034, respectively, and decreased to 0.6712 and 1.6506 on test dataset. [Conclusion]: Our work has been actively refining a machine-learning model to improve neoantigen identification and predictions with the determinants for Neoantigen identification. The final experimental results show that our method is more effective than existing methods for predicting peptide types, which can help laboratory researchers to identify the type of novel HLA-peptide binding. Keywords: machine learning; Cancer Cell Immunology; HLA-peptide binding Neoantigen Prediction; HLA; Data Visualization; Novel Neoanti-gen and TCR Pairing Discovery; Vector representation


2021 ◽  
Vol 2 (04) ◽  
pp. 113-119
Author(s):  
Hassan Ali Mohammed ◽  
Subhi Zeebaree ◽  
Volkan Mujdat Tiryaki ◽  
Mohammed M.Sadeeq

In this era, technology is playing a central role in many areas of human life, but the classical hardcopy-based approaches are still being used for land registration. The Internet-based methods provide excellent facilities for overcoming the drawbacks of handwritten-based style and communication among different government sectors. Nowadays, Information and Communication Technology (ICT) is used to build professional electronic systems as big steps towards the electronic government (E-government) system. One of the most critical sections of the E-government is the E-Land-Registration (ELR). Duhok Land Directorate, together with its sub-directorates, works on a considerable amount of data to process. These directorates suffer from the classical hardcopy-based approaches, so building an ELR system will reduce time consumption and paper waste. The improvement of the land registration system will also allow integration with the E-government system. The progress of the land registration will enable communication between the land registration staff on one side and the administration and financial directorates on the other. In this thesis, an efficient ELR system for Duhok land registration is proposed. The services of the database management system cover Employee Registration Module, Estates Registration Module, Operation Type Module, Estate Owners Module, Estate Status Module, View Information Module, and Login Employee Module. HTML, CSS, PHP, MySQL, JavaScript, jQuery, Ajax, and Bootstrap tools were used for the design and implementation stages of the proposed ELR.


PRIMO ASPECTU ◽  
2021 ◽  
pp. 55-59
Author(s):  
Alexander V. PONOMAREV ◽  
Nikita A. KOSTIN

The article emphasizes the importance of the skills of the future in the training of a modern specialist in the labor market. A list of relevant skills of the future is given. A research design is presented in the development of a program for the formation of the skills of the future in the environment of student teams. The article analyzes the scientific literature on the topic of this study, describes the portrait of a soldier of the student detachments of UrFU in the context of the skills of the future. Conclusions are made about the skills of the future that are in demand by the fighters of student teams. Technologies for the formation of the skills of the future in the environment of student teams are proposed. The article presents a program for the formation of the skills of the future among the student teams of the Ural Federal University. The program consists of 4 modules: an information module, which includes 4 lectures from the speakers of the UPI, Ural State University-Ural Federal University Alumni Association and the Ural Federal University's Center of Universal Competencies "4K", an interactive module consisting of four trainings, a project module including "Creative Laboratory". The practical module contains five activities aimed at building the skills of the future. The results of testing some of the elements of the program for the formation of skills in the environment of student teams are presented. The conclusion is made about the significant potential of the movement of student teams in the formation of the skills of the future.


2021 ◽  
pp. 1-14
Author(s):  
Guanqun Cai

In order to extract value from data, data mining and data software technology are widely used in the industry. This study mainly discusses the precise mining of location data in communication field based on big data. Signaling preprocessing layer mainly obtains signaling message through acquisition module, filters FISU message in signaling message, judges abnormal message frame, and stamp it with time stamp, which provides effective data source for next processing. Signaling access layer mainly completes the function of signaling link access, mainly using high resistance jumper technology, time slot convergence technology, optical access technology and 155mdxc conversion technology to access 2 m link and 155 m link respectively. The signaling collection module must collect directly or via a link through DXC in order to reach the front-end data collection machine and access the signaling collection module of the front-end machine. The Signaling Collection Module also completes some of the message processing work. The presentation layer is the window of human-computer interaction of the whole system, which presents to users with friendly interface and perfect functions. The main goal of real-time big data analysis is to obtain signaling data sent by signaling acquisition system, and screen out the effective information in signaling data according to monitoring conditions, and then analyze the final real-time monitoring results. Geographic information module provides visual map control for the regional monitoring big data analysis module. The difficulty of system development can be reduced by using the existing WebGIS map toolkit. When the call from the Customs Bureau of Unicom in different cities is called into the mobile gateway Bureau, the call is rejected by the mobile customs bureau. The call time is 0 seconds, of which the interception success rate is up to 90% within 1 s. This research is of great significance for the better development and maintenance of signaling network and monitoring system.


2021 ◽  
Vol 27 (6) ◽  
pp. 322-330
Author(s):  
E. A. Gosteva ◽  
◽  
V. V. Lanin ◽  

The article is devoted to the description of intelligent information retrieval system development according to industry standards based on the Stanford CoreNLP tool. The description of the subject area, design, and main stages of system development are presented: development of extracting information module from industrial standards, implementation of a web service using the Flask framework, and a client web application on React JS. The use of the developed system by engineers and software developers will make it possible to effectively manage the definition base of industrial standards, understand them correctly and observe them in accordance with the chosen field of knowledge.


Author(s):  
Kathryn T. Drazba ◽  
Jessica Johnson Denton ◽  
Christina Barger Hurst ◽  
Gerald McGwin ◽  
Paul A. MacLennan ◽  
...  

Mathematics ◽  
2021 ◽  
Vol 9 (8) ◽  
pp. 901
Author(s):  
Kobiljon Khushvakhtzoda (Barfiev) ◽  
Dmitry Nazarov

The study of the assessment and reflection of biological assets in the economic processes of agricultural enterprises can be represented as a chain of phenomena in which scientists and practitioners try to study and understand the nature and essence of biological assets in various aspects. This article discusses the principles of accounting for biological assets in the agricultural enterprises’ economic life of the Republic of Tajikistan and identifies the reasons and mechanisms for their reflection based on the principles of the International Financial Reporting System (IFRS) in refraction to the specifics and national features of accounting. The author gives his own interpretation of these approaches and constructs the architecture of the information module for accounting for biological assets and the results of biotransformation, based on the web services architecture (WSA) within the framework of the development trend of these and new accounting models in connection with the transition of the world economy to a digital format. The article provides specific authors’ approaches to implementing this architecture in PHP (Hypertext Preprocessor) and also implements one of the approaches to assessing the value of biological assets, based on the theory of fuzzy sets, taking into account the risk of investment inefficiency.


Author(s):  
Xudong Liu ◽  
Jun Kong ◽  
Min Jiang ◽  
Sha Li
Keyword(s):  

2021 ◽  
Vol 13 (2) ◽  
pp. 162
Author(s):  
Jun Qin ◽  
Biao Wang ◽  
Yanlan Wu ◽  
Qi Lu ◽  
Haochen Zhu

Pine nematode is a highly contagious disease that causes great damage to the world’s pine forest resources. Timely and accurate identification of pine nematode disease can help to control it. At present, there are few research on pine nematode disease identification, and it is difficult to accurately identify and locate nematode disease in a single pine by existing methods. This paper proposes a new network, SCANet (spatial-context-attention network), to identify pine nematode disease based on unmanned aerial vehicle (UAV) multi-spectral remote sensing images. In this method, a spatial information retention module is designed to reduce the loss of spatial information; it preserves the shallow features of pine nematode disease and expands the receptive field to enhance the extraction of deep features through a context information module. SCANet reached an overall accuracy of 79% and a precision and recall of around 0.86, and 0.91, respectively. In addition, 55 disease points among 59 known disease points were identified, which is better than other methods (DeepLab V3+, DenseNet, and HRNet). This paper presents a fast, precise, and practical method for identifying nematode disease and provides reliable technical support for the surveillance and control of pine wood nematode disease.


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