首页> 外文会议>International Technology, Education and Development Conference >(870) LEARNING ANALYTICS SOFTWARE FOR MEDICAL STUDENTS REGARDING PREGNANCY COMPLICATIONS
【24h】

(870) LEARNING ANALYTICS SOFTWARE FOR MEDICAL STUDENTS REGARDING PREGNANCY COMPLICATIONS

机译:(870)学习关于妊娠并发症的医学生分析软件

获取原文

摘要

The fast development of software for medicine caused the arise of new methods of learning about illnesses and complications which appear during pregnancies. The curriculum has to adapt to the student's skills, knowledge for them to reach their potential. Learning analytics provides answers and possible solutions for the pregnant women who come to be monitored and treated. The measurement, gathering, analysis and reporting of biological parameters help the doctors and their students to understand and to optimize the healthcare learning, as well as to improve the applied treatments. The proposed tool combines descriptions, diagnostics, predictions and prescriptions in order to obtain optimal results. The online learning experiences bring evolution and expansion of knowledge for the medical students who will become the future generations of doctors. The system uses an ontology to build the learner profile regarding the notions about illnesses and complications of pregnant women. The recommender algorithm takes into consideration the medical students who did well while learning from the course where the mandatory notions have to be known. The mandatory notions that appear inside the ontology are defined in an RDF file. The notions are linked using RDF triples that are created between a subject, an object and a predicate. The information about the other consulted materials which are added by the doctors are also taken into consideration when doing the reading recommendations based on the new created triples. SPARQL queries are used for querying the data depending on the ontology reasoning and on the defined rules that satisfy a certain condition. The learning analytics software takes into consideration implicit and explicit metrics. The implicit metric gives the patterns of the user's behaviour, without being aware of it. The explicit metric is triggered by the notions which are checked based on validated knowledge coming from the medical staff. The quality of learning is improved by analyzing the described metrics and using the automatic recommender in a time where it is difficult to choose out of the many resources and courses that are available online. The dashboard of the students provides them information to understand the immediate actions which should be undertaken for studying pregnancy complications.
机译:医学软件的快速发展导致出现新的学习疾病和并发症的新方法。课程必须适应学生的技能,为他们达到潜力的知识。学习分析为将被监控和治疗的孕妇提供答案和可能的解决方案。生物参数的测量,收集,分析和报告有助于医生和学生理解并优化医疗保健学习,以及改善应用治疗。该工具结合了描述,诊断,预测和处方,以获得最佳结果。在线学习经验为将成为未来几代医生的医学生提供演化和扩张。该系统使用本体论构建有关关于孕妇疾病和并发症的学习者的概况。推荐人算法考虑到从必须知道强制性概念的课程中学习良好的医学生。本体内部出现的强制性概念在RDF文件中定义。使用在主题,对象和谓词之间创建的RDF三维来链接概念。在根据新的创建三元组进行阅读建议时,还考虑了医生添加的其他咨询材料的信息。 SPARQL查询用于根据本体推理和满足某个条件的定义规则查询数据。学习分析软件考虑了隐式和显式度量。隐式度量标准给出了用户行为的模式,而不知道它。显式度量由基于来自医务人员的验证知识进行检查的概念触发。通过分析所描述的指标并使用自动推荐在难以选择在线提供的许多资源和课程的时间来改进学习质量。学生的仪表板为他们提供了解学习妊娠并发症的立即行动的信息。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号