Ou-Yang Chao, Wulandari Chandrawati Putri, Hariadi Rizka Aisha Rahmi, Wang Han-Cheng, Chen Chiehfeng
Department of Industrial Management, National Taiwan University of Science and Technology, Taipei, Taiwan.
Department of Information System, Universitas Brawijaya, Malang, Indonesia.
PeerJ. 2018 Jul 9;6:e5183. doi: 10.7717/peerj.5183. eCollection 2018.
Increases in outpatients seeking medical check-ups are expanding the number of health examination data records, which can be utilized for medical strategic planning and other purposes. However, because hospital visits by outpatients seeking medical check-ups are unpredictable, those patients often cannot receive optimal service due to limited facilities of hospitals. To resolve this problem, this study attempted to predict re-visit patterns of outpatients.
Two-phase sequential pattern mining (SPM) and an association mining method were chosen to predict patient returns using sequential data. The data were grouped according to the outpatients' personal information and evaluated by a discriminant analysis to check the significance of the grouping. Furthermore, SPM was employed to generate frequency patterns from each group and extract a general association pattern of return.
Results of sequence patterns and association mining in this study provided valuable insights in terms of outpatients' re-visit behaviors for regular medical check-ups. and are two symmetric measures which were used in this study to indicate the degree of association between two variables. For instance, values of variable abnormal blood pressure associated with an abnormal body-mass index (BMI) and/or abnormal blood sugar were respectively 47.5% and 100%, for the two-visit and three-visit behavior patterns. These results indicated that the corresponding pair of variables was more reliable when covering the three-visit behavior pattern than the two-visit behavior. Thus, appropriate preventive measures or suggestions for other medical treatments can be prepared for outpatients that have this pattern on their third visit. The higher degree of association implies that the corresponding behavior pattern might influence outpatients' intentions to regularly seek medical check-ups concerning the risk of stroke. Furthermore, a radiology diagnosis (i.e., magnetic resonance imaging or neck vascular ultrasound) plays an important role in the association with a re-visit behavior pattern with respective 50% and 70% and values in general behavior {f11}∧{f01}. These findings can serve as valuable information to increase the quality of medical services and marketing, by suggesting appropriate treatment for the subsequent visit after learning the behavior patterns.
The proposed method can provide valuable information related to outpatients' re-visit behavior patterns based on hidden knowledge generated from sequential patterns and association mining results. For marketing purposes, medical practitioners can take behavior patterns studied in this paper into account to raise patients' awareness of several possible medical conditions that might arise on subsequent visits and encourage them to take preventive measures or suggest other medical treatments.
寻求体检的门诊患者数量不断增加,使得健康检查数据记录的数量也在扩大,这些数据可用于医疗战略规划及其他目的。然而,由于寻求体检的门诊患者就诊情况不可预测,这些患者常常因医院设施有限而无法获得最佳服务。为解决这一问题,本研究试图预测门诊患者的复诊模式。
选择两阶段序列模式挖掘(SPM)和关联挖掘方法,利用序列数据预测患者复诊情况。数据根据门诊患者的个人信息进行分组,并通过判别分析进行评估,以检验分组的显著性。此外,采用SPM从每组中生成频率模式,并提取复诊的一般关联模式。
本研究的序列模式和关联挖掘结果为门诊患者定期体检的复诊行为提供了有价值的见解。 和 是本研究中用于表示两个变量之间关联程度的两个对称度量。例如,在两次就诊和三次就诊行为模式中,与异常体重指数(BMI)和/或血糖异常相关的血压异常变量的 值分别为47.5%和100%。这些结果表明,当涵盖三次就诊行为模式时,相应的变量对比两次就诊行为更可靠。因此,对于第三次就诊时有这种模式的门诊患者,可以制定适当的预防措施或其他治疗建议。较高的关联度意味着相应的行为模式可能会影响门诊患者定期进行中风风险相关体检的意愿。此外,放射学诊断(即磁共振成像或颈部血管超声)在与复诊行为模式的关联中起着重要作用,在一般行为{f11}∧{f01}中,其 和 值分别为50%和70%。通过在了解行为模式后为后续就诊建议适当的治疗方法,这些发现可为提高医疗服务质量和营销提供有价值的信息。
所提出的方法可以基于从序列模式和关联挖掘结果中生成的隐藏知识,提供与门诊患者复诊行为模式相关的有价值信息。出于营销目的,医生可以考虑本文研究的行为模式,以提高患者对后续就诊可能出现的几种医疗状况的认识,并鼓励他们采取预防措施或建议其他治疗方法。