BioPD: a web-based information center for bioactive peptides

2004 ◽  
Vol 120 (1-3) ◽  
pp. 1-3 ◽  
Author(s):  
Lei Shi ◽  
Qipeng Zhang ◽  
Wei Rui ◽  
Ming Lu ◽  
Xia Jing ◽  
...  
2018 ◽  
Vol 23 (3) ◽  
pp. 175-191
Author(s):  
Anneke Annassia Putri Siswadi ◽  
Avinanta Tarigan

To fulfill the prospective student's information need about student admission, Gunadarma University has already many kinds of services which are time limited, such as website, book, registration place, Media Information Center, and Question Answering’s website (UG-Pedia). It needs a service that can serve them anytime and anywhere. Therefore, this research is developing the UGLeo as a web based QA intelligence chatbot application for Gunadarma University's student admission portal. UGLeo is developed by MegaHal style which implements the Markov Chain method. In this research, there are some modifications in MegaHal style, those modifications are the structure of natural language processing and the structure of database. The accuracy of UGLeo reply is 65%. However, to increase the accuracy there are some improvements to be applied in UGLeo system, both improvement in natural language processing and improvement in MegaHal style.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Kai-Yao Huang ◽  
Yi-Jhan Tseng ◽  
Hui-Ju Kao ◽  
Chia-Hung Chen ◽  
Hsiao-Hsiang Yang ◽  
...  

AbstractAnticancer peptides (ACPs) are a kind of bioactive peptides which could be used as a novel type of anticancer drug that has several advantages over chemistry-based drug, including high specificity, strong tumor penetration capacity, and low toxicity to normal cells. As the number of experimentally verified bioactive peptides has increased significantly, various of in silico approaches are imperative for investigating the characteristics of ACPs. However, the lack of methods for investigating the differences in physicochemical properties of ACPs. In this study, we compared the N- and C-terminal amino acid composition for each peptide, there are three major subtypes of ACPs that are defined based on the distribution of positively charged residues. For the first time, we were motivated to develop a two-step machine learning model for identification of the subtypes of ACPs, which classify the input data into the corresponding group before applying the classifier. Further, to improve the predictive power, the hybrid feature sets were considered for prediction. Evaluation by five-fold cross-validation showed that the two-step model trained with sequence-based features and physicochemical properties was most effective in discriminating between ACPs and non-ACPs. The two-step model trained with the hybrid features performed well, with a sensitivity of 86.75%, a specificity of 85.75%, an accuracy of 86.08%, and a Matthews Correlation Coefficient value of 0.703. Furthermore, the model also consistently provides the effective performance in independent testing set, with sensitivity of 77.6%, specificity of 94.74%, accuracy of 88.99% and the MCC value reached 0.75. Finally, the two-step model has been implemented as a web-based tool, namely iDACP, which is now freely available at http://mer.hc.mmh.org.tw/iDACP/.


2021 ◽  
Vol 1 (1) ◽  
Author(s):  
Dini Aprilia Puspitasari ◽  
Ade Eviyanti

The Data and Information Center (PUSDATIN) is the main facility for disaster management. Integrated data is the main support in determining disaster management policies. The purpose of research is to built an integrated disaster information system to optimize the function of PUSDATIN. The research method used was interviews and data collection. This system was developed using MySQL and Dreamweaver. There are 3 (three) user levels : user, admin and super admin. The result is an integrated disaster information system on web-based that can be accessed by anyone, according to the level of user, users can execute CRUD commands smoothly, data redundancies can be reduced, and optimization of BPBD resources by using PUSDATIN as 1 (one) gate data. The conclusion of this research is this web-based integrated disaster information system running well and has a positive effect on the performance of PUSDATIN as a traffic data center for disasters and fires.


2000 ◽  
Vol 8 ◽  
pp. 44 ◽  
Author(s):  
Lawrence M. Rudner

Ubiquitous for 35 years, the Educational Resources Information Center (ERIC) is known for its database and recently for its range of web-based information services. I contend that federal policy with regard to ERIC must change and that ERIC will need massive restructuring in order to continue to meet the information needs of the education community. Five arguments are presented and justified: 1) ERIC is the most widely known and used educational resource of the US Department of Education, 2) senior OERI and Department of Education officials have consistently undervalued, neglected, and underfunded the project, 3) ERIC’s success is due largely to information analysis and dissemination activities beyond ERIC’s contracted scope, 4) information needs have changed dramatically in the past few years and ERIC cannot keep up with the demands given its current resources, and 5) the ERIC database itself needs to be examined and probably redesigned.


1998 ◽  
Vol 62 (9) ◽  
pp. 671-674
Author(s):  
JF Chaves ◽  
JA Chaves ◽  
MS Lantz
Keyword(s):  

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