Electronic Medical Record (EMR) is a computerized health information system that contains demographic and medical data, and some of them equipped with decision support system. EMR make health services management better. RS Universitas Gadjah Mada is one of health care providers using EMR. EMR is a mandatory application in RS Universitas Gadjah Mada. EMR development need to fit the needs and expectations of users. MMUST is a model for assessing success implementation IT in mandatory environment. Users are the succes key an information system. By understanding user's perception, it can be known the obstacles to maximize adoption of EMR in improving service quality. The study aims to analyze the successful implementation of EMR based MMUST. The research type is quantitative with cross sectional design. Data from 100 users selected by simple random sampling were analyzed by SEM-PLS analysis technique using SmartPLS 3.2.3 software. The result of this study proved that all MMUST variables have an effect on the success of RME implementation with R 2 of information satisfaction 0.394; performance expectations 0.292; overall satisfaction 0.602; net benefit 0.444; and attitude 0.655. Value of Goodness of Fit (GoF) was 0.5777, so this model was substantially enough to represent the research result. Keywords: electronic medical record, mandatory, model for mandatory use of software technologies AbstrakRekam Medis Elektronik (RME) merupakan sistem informasi kesehatan terkomputerisasi yang berisi data sosial dan data medis pasien, serta dapat dilengkapi dengan sistem pendukung keputusan. RME dapat membantu manajemen pelayanan kesehatan pasien dengan lebih baik. RS Universitas Gadjah Mada mewajibkan penggunaan RME. Saat ini RME dalam tahap pengembangan. Pengguna merupakan aspek penting untuk mewujudkan RME yang ideal. MMUST merupakan model untuk menilai kesuksesan sistem pada lingkungan mandatory. Dengan memahami persepsi pengguna mengenai RME dapat ditemukan rekomendasi yang tepat untuk memaksimalkan adopsi RME untuk meningkatkan kualitas pelayanan pasien. Penelitian ini menganalisis faktor-faktor penentu kesuksesan implementasi RME di RS Universitas Gadjah Mada berdasarkan MMUST. Jenis penelitian adalah penelitian kuantitatif dengan rancangan cross sectional. Data dari 100 pengguna RME yang dipilih secara simple random sampling dianalisis dengan teknik analisis SEM-PLS menggunakan software SmartPLS 3.2.3. Hasi penelitian ini membuktikan seluruh variabel MMUST berpengaruh terhadap kesuksesan implementasi RME dengan nilai R 2 kepuasan informasi 0,394; harapan kinerja 0,292; kepuasan keseluruhan 0,602; manfaat keseluruhan 0,444; dan sikap 0,655. Nilai Goodness of Fit (GoF) sebesar 0.5777, sehingga dapat disimpulkan model penelitian ini secara substansial merepresentasikan hasil penelitian. Kata kunci: rekam medis elektronik, mandatory, model for mandatory use of software technologies
The existence of technology in education has impact tremendously in learning. This greatly facilitates the experience of students in order not to be monotonous and boring. The usefulness of the media learning app is very accepted by the public because it allows users, especially for Students. Advantages in the use of media applications can add new knowledge to a lesson. To facilitate the learning experience of the student, to learning to speak German can use the app Quizizz. Features. Quizizz is very easy for students to understand and explore a learning material. This research was conducted by interviewing 10 students of education German language ever use the app Quizizz with the aim to see the opinion of the experience of students who learn using the application. Based on the results of this research, many of the students of the educational program of the German language, said that the experience of learning with the application quizizz is very easy to understand the material of the German language and is also very effective in explore and evaluate his understanding.
At service companies that are customers of the company. Customers can be given lung from a service provider company. Customer satisfaction is formed from the level of achievement and company loyalty. This research supports companies in understanding the level of community satisfaction with services provided by companies in order to improve their performance and loyalty. The method used is the method of data mining with the algorithm c4.5 to obtain results from the decision tree that contains community satisfaction through predetermined criteria. With questionnaires shared with the appraisal community then used as research data.
This study aims to analyze the readiness of the economics lecturers and students at the Faculty of Economics and Business Management, National University of Laos, Laos in providing an economics education via the online application to face the pandemics Covid-19. The approach in this research uses a qualitative descriptive approach with the type of case study research. The informants of this study were economics lecturers and students, who were selected through the purposive sampling technique. This study indicates that the process of economics students consists of understanding, preparation, instrument tools, and online application relevant cases. This study aims to improve and find the solution to the quality of economics students in facing the pandemics Covid-19. The finding shows that most of the economics lecturers and learners are readiness, well understand and familiar utilizing with the online application.
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