Christianto Paminto Agung, Sediyono Eko, Sembiring Irwan
Department of Computer Science, Satya Wacana Christian University, Salatiga, Indonesia.
College of Informatics and Computer Management (STMIK), Widya Pratama, Pekalongan, Indonesia.
Healthc Inform Res. 2022 Jul;28(3):267-275. doi: 10.4258/hir.2022.28.3.267. Epub 2022 Jul 31.
Eighty percent of in vitro fertilization (IVF) patients have high anxiety levels, which influence the success of IVF and drive IVF patients to quickly report any abnormal symptoms. Rapid responses from fertility subspecialist doctors may reduce patients' anxiety levels, but fertility subspecialist doctors' high workload and their patients' worsening health conditions make them unable to handle IVF patients' complaints quickly. Research suggests that smart systems using case-based reasoning (CBR) can help doctors handle patients quickly. However, a prior study reported enhanced accuracy by modifying the CBR similarity formula based on Lin's similarity theory to generate the Chris case-based reasoning (CCBR) similarity formula.
The data were validated through interviews with two fertility subspecialist doctors, interviews with two IVF patients, a questionnaire administered to 17 community members, the relevant literature, and 256 records with data on IVF patients' complaints and how they were handled. An experiment compared the performance of the CBR similarity formula algorithm with the CCBR similarity formula algorithm.
A confusion matrix showed that the CCBR similarity formula had an accuracy value of 52.58% and a precision value of 100%. Fertility subspecialist doctors stated that 89.69% of the CCBR similarity formula recommendations were accurate.
We recommend applying a combination of the CCBR similarity formula and a minimum reference value of 80% with a CBR smart system for handling IVF patients' complaints. This recommendation for an accurate system produced by the CBR similarity formula may help fertility subspecialist doctors handle IVF patients' complaints.
80%的体外受精(IVF)患者焦虑水平较高,这会影响IVF的成功率,并促使IVF患者迅速报告任何异常症状。生殖专科医生的快速回应可能会降低患者的焦虑水平,但生殖专科医生的高工作量以及患者不断恶化的健康状况使他们无法迅速处理IVF患者的投诉。研究表明,使用基于案例推理(CBR)的智能系统可以帮助医生快速处理患者问题。然而,先前的一项研究报告称,通过基于林氏相似性理论修改CBR相似性公式以生成克里斯基于案例推理(CCBR)相似性公式,可提高准确性。
通过对两名生殖专科医生进行访谈、对两名IVF患者进行访谈、向17名社区成员发放问卷、查阅相关文献以及256条IVF患者投诉及其处理方式的数据记录,对数据进行验证。进行了一项实验,比较CBR相似性公式算法和CCBR相似性公式算法的性能。
混淆矩阵显示,CCBR相似性公式的准确率为52.58%,精确率为100%。生殖专科医生表示,CCBR相似性公式的建议中有89.69%是准确的。
我们建议将CCBR相似性公式与80%的最低参考值相结合,应用于处理IVF患者投诉的CBR智能系统。由CBR相似性公式得出的这一准确系统的建议可能有助于生殖专科医生处理IVF患者的投诉。