Bibliographic Details
| Title: |
Implementation of DICOM Modality Worklist at Patient Registration Systems in Radiology Unit. |
| Authors: |
Kartawiguna, Daniel, Georgiana, Vina |
| Source: |
EPJ Web of Conferences; 2014, Issue 68, p1-8, 8p |
| Subject Terms: |
DICOM (Computer network protocol), DIGITAL diagnostic imaging, RADIOLOGY, MAGNETIC resonance imaging, COMPUTED tomography |
| Abstract: |
Currently, the information and communication technology is developing very rapidly. A lot of hospitals have digital radiodiagnostic modality that supports the DICOM protocol. However, the implementation of integrated radiology information system with medical imaging equipment is still very limited until now, especially in developing countries like Indonesia. One of the obstacles is high prices for radiology information system. Whereas the radiology information systems can be widely used by radiologists to provide many benefit for patient, hospitals, and the doctors themselves. This study aims to develop a system that integrates the radiology administration information system with radiodiagnostic imaging modalities. Such a system would give some benefits that the information obtained is more accurate, timely, relevant, and accelerate the workflow of healthcare workers. This research used direct observation method to some hospital radiology unit. Data was collected through interviews, questionnaires, and surveys directly to some of the hospital's radiology department in Jakarta, and supported by the literature study. Based on the observations, the prototype of integrated patient registration systems in radiology unit is developed and interfaced to imaging equipment radiodiagnostic using standard DICOM communications. The prototype of radiology patient registration system is tested with the modality MRI and CT scan. [ABSTRACT FROM AUTHOR] |
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| Database: |
Complementary Index |