Background
The emergency department (ED) is at the forefront and must contend with crucial medical requirements. EDs are often crowded with patients waiting for medical treatment or admission. It is difficult to meet the emergency care needs of patients who crowd the ED [
1,
2]. Because EDs are often crowded with patients in need of care, rapid discharge can reduce the burden on the ED. However, discharging patients without careful medical examination can compromise medical care quality and patient safety [
3]. If the patient’s symptoms persist or recur, then patients will need to revisit the ED for medical help. An unscheduled return visit (URV) to the ED within 72-h is an indicator of ED performance. An URV within 72-h was used to monitor adverse events and medical errors in a hospital quality improvement program [
3].
According to a previous study, 32.5% of unplanned return visits (URVs) within a 72-h timeframe were found to be avoidable [
4]. These URVs can occur due to various factors, including medical errors, patient deterioration, non-adherence to treatment, and complicated symptoms. Previous research has highlighted the impact of medical errors on patient safety and healthcare costs [
5]. Furthermore, studies have reported that URVs can be influenced by patient-based and illness-based factors [
6,
7]. It has also been observed that URV patients tend to have a higher admission rate compared to those who do not experience a return visit [
5,
8,
9]. Therefore, the rate of 72-h URVs serves as an indicator of the quality of hospital service. Understanding the potential risks associated with URV patients is crucial for improving medical care and enhancing the overall quality of hospital services [
10]. Additionally, a 72-h URV not only leads to the waste of medical resources but also increases medical care costs [
11,
12]. Lawsuits associated with URVs can also disrupt the medical system. Factors, such as age, triage, clinical division, and health education, prior to discharge have been identified as contributing to a higher URV rate. Elderly URV patients, in particular, are at a higher risk due to their medical complexity [
13].
Extensive exploration and verification of the characteristics of 72-h URVs have been conducted in numerous studies, with comorbidity assessment, such as the Charlson Comorbidity Index (CCI), being utilized to predict the 30-day mortality rate for elderly patients visiting the emergency department (ED) [
14,
15]. Additionally, a higher CCI score has been associated with admission, transfer, or death in the ED [
16]. Existing evidence strongly supports the notion that elderly patients with a high CCI are highly prone to revisiting the ED within a 72-h timeframe.
However, there remains a scarcity of research focusing on URV patients within the working age population. The working age demographic is typically defined as individuals between 15 and 64 years old, as outlined by the Organization for Economic Co-operation and Development (OECD). In the context of Taiwan, data from the National Development Council's report reveal that over 76.7% of individuals under the age of 50 are actively participating in the labor force [
17]. This particular age group constitutes the primary driving force behind gross domestic product (GDP) growth and assumes vital roles in supporting both their families and the overall society. Reducing the occurrence of URVs among these productive individuals would be advantageous not only to their families but also to the country as a whole. While significant research has been conducted to identify the factors influencing URVs in the elderly population, the same level of attention has not been given to younger URV patients. Consequently, the aim of this study is to explore the potential factors that contribute to the occurrence of 72-h URVs and subsequent admissions in patients below the age of 50. By addressing this research gap, we can gain a more comprehensive understanding of the factors influencing URVs in this specific age group and work toward reducing their occurrence effectively.
Methods
Study design and setting
We conducted the case–control study by reviewing the 72-h URV patients in National Cheng Kung University Hospital (NCKUH), which was approved by the Ethics Review Board of NCKUH. The case group was determined according to the 72-h URV patients whom admitted to the hospital. The control group was determined according to the 72-h URV patients whom did not admitted to the hospital.
Inclusion and exclusion criteria
The 72-h URV patients visit to NCKUH ED during January 1 of 2015 to March 31 of 2020 were included. The URV patients less than 18 years old and the trauma patients were excluded.
Variables definition
Data collected from medical records included major diagnostic findings, vital signs (blood pressure, heart rate, etc.).
Charlson Comorbidity Index [
18], originally consisting of 19 items corresponding to different comorbid conditions, was applied to different populations as a prognostic measure to predict mortality in longitudinal studies [
15]. A higher score on the index indicates a greater likelihood of predicted outcomes leading to mortality, with a score of zero indicating the absence of any comorbidities.
Rapid Acute Physiology Score (RAPS) [
19], was specifically developed as a severity scale for critical care transports. RAPS is a condensed adaptation of the Acute Physiology and Chronic Health Evaluation (APACHE-II), focusing on parameters that are readily accessible for all transported patients. It includes measurements, such as pulse, blood pressure, respiratory rate, and the Glasgow Coma Scale.
Sequential Organ Failure Assessment (qSOFA) [
20], designed for patients not in the intensive care unit (ICU), serves as a tool to identify high-risk individuals. It helps to flag patients who may require immediate attention or escalation of care.
Shock Index [
21], is calculated by dividing the heart rate (HR) by the systolic blood pressure (SBP).
5-level Taiwan Triage and Acuity Scale (TTAS) triage system used in Taiwan to categorize emergency patients based on their vital signs and overall clinical status. Ranging from the most severe (Level 1) to the least severe (Level 5), level 1 to level 2 triage was classified as severe triage [
22].
Length of stay denotes the duration of patients' stays in the ED, providing insights into the time they spend receiving medical care.
Age is an additional factor used to calculate CCI, and people’s age younger than 50 with a CCI less than 2 was classified as younger and having low comorbidity [
23]. In order to compare the factors associated with admission in different age, the age was stratified as the subgroup of age below 50, 50–60, 60–70, 70–80, and age above 80.
Additionally, other variables were considered, such as discharge/admission, rotation, weekday/weekend, causes related to revisit (symptoms not relief, recurrence, complications, new clinical problem, misdiagnosis, improper medical disposing, disposing sequela, adverse drug reaction, diagnosis certification, etc.) and the record of discharge. The primary outcome is the 72-h URVA (patients’ unscheduled revisit the ED with admission in 72-h). We compared the differences in the potential risk factors associated with 72-h URVA between the two groups. The patients were further subdivided by the age of 50 on the basis of the CCI definition.
Statistical analysis
The categorical variables are presented as percentages (%) and were tested by the χ2-test, continuous variables are presented as the mean ± standard deviation and were tested with Student’s t test. To investigate the potential predictive factors for patients with a low CCI and a low rate of URVA, we therefore focused on the group of patients younger than 50 years old. To identify potential risk factors associated with unscheduled revisits to the emergency department, we employed a decision tree (DT) methodology. The decision tree utilized the Gini impurity index, a measure of node impurity, to effectively split the variables and partition the study participants into two distinct groups: URVA and URVNA. Utilizing this machine learning technique, we aimed to uncover the key variables that contribute to the differentiation between these groups. To conduct the decision tree analysis, we utilized two R packages, “rpart” and “partykit”. The DT model was verified by logistic regression to calculate the odds ratio (OR) of candidate variables. The α level was set at 0.05. We applied R (ver. 3.6.2) to conduct the data analysis.
Discussion
The study suggested that CCI ≥ 3, DBP ≤ 87, and age > 34 (Table
4) measured on the initial visit to the ED are potential risk factors associated with patients admitted to the hospital while they revisit the ED for 72-h.
The results showed that the length of stay for URVA patients was 6.63 h, which is longer than the 4.33 h of the URVNA patients. This means that URVA patients have more severe conditions than URVNA patients at the first ED visit, and the triage severity is consistent with the finding. The CCI of URVA patients was higher than that of URVNA patients, which indicates that comorbidity is a risk factor for admission to the hospital. In particular, CHF, CTD, liver disease, DM, and solid tumors were significantly different between the discharged and admitted patients. This finding is consistent with that of a previous study that reported that potentially avoidable return visits were more severe in ill patients [
10].
In geriatric research, URV and admission (URVA) were positively correlated with higher CCI scores [
24]. High CCI scores were associated with the URV of elderly patients, but patients younger than 50 years old with low CCI scores were not well documented. The study presented the potential factors contributing to URVA within 72-h in patients with a low CCI, since elderly URV patients were well documented and the factors were reported to be associated with comorbidities [
25‐
27].
Revisits were primarily illness-related in 72.6% of the URVA patients, such as “progression of disease,” “recurrent disease progression,” “complication,” and “new problem.” The top 3 diagnoses in URVA patients were “fever,” “dyspnea,” and “dizziness.” The percentage was higher than that in a previous study conducted in Spain, which reported that URV was due to illness in 61.1% of patients.10
A study analyzed the characteristics of patients who revisited the ED within 48 h and reported that dyspnea was the most common chief complaint [
28]. This finding is consistent with our study, which found 4.6% of URVA patients were diagnosed with dyspnea, which is higher than the 2.2% in the URVNA group.
The initial node in the decision tree is triage. A previous study also indicated that severe triage is a risk factor for URVA and has an OR of 2.1 (95% CI 1.3–3.2) [
5]. A CCI score higher than 3 is another risk factor, and this finding is consistent with a study that reported that a CCI score higher than 2 was associated with a higher admission rate [
29]. A CCI score more than 3, a DBP less than 86.5, and an age older than 34 are secondary risk factors. The value of the “CCI”, “DBP”, and “Age” assessed at the first visit to the ED could be applied to predict whether the patients would be admitted to the hospital on the second visit to the ER. There is a worry that the occurrence of New problem as the causes for the URV within 72-h were approximately 20% in both groups (Table
2). The average age of URVA patients was 38.25, which is higher than the average age of 35.47 in URVNA. Additionally, the CCI value for URVA was 0.42, indicating a higher severity level compared to the CCI value of 0.23 observed in URVNA. Consequently, the decision tree might overestimate the nodes due to the Age and CCI values were significantly higher in the URVA group compared to the URVNA group. However, there was no significantly difference in the distribution of New problem between the two groups (18.59% in URVA versus 18.19% in URVNA), so the admission or discharge of patients was not correlated with the presence of New problem. Therefore, the concern that New problem may impact hospital admission would not bias the judgment of decision tree.
Low DBP could be a prognosis factor for hospital admission [
30]. Our study also reported that a DBP less than 86.5 is a risk factor for URVA. Length of stay is a risk factor associated with URVA [
31]. Our study also found that the length of stay in the URVA group was longer than that in the URVNA group, but the decision tree did not suggest length of stay as a risk factor. In addition, length of stay is an indicator of ED crowding, which can impact medical care quality. ED crowding implies that medical practitioners cannot meet the demands of patients in need of emergency care services, which contributes to poor quality of medical care services [
32]. ED crowding might delay the delivery of necessary medical treatments in emergency conditions, thus leading to adverse patient health. ED crowding has been reported as a risk factor for 72-h URV [
33].
We also analyzed the first ED visiting times and doctors’ shifts by logistic regression and found that both factors were significant in predicting revisit admission, but the decision tree ignored these factors. A previous study reported that URV percentage was not affected during the weekend or weekdays [
34], which is also consistent with our findings.
The strength of the study is that we applied machine learning to screen the potential risk factors for URVA. These risk factors suggested by the decision tree were verified by logistic regression and were presented as an odds ratio.
The limitation of the study is that the factors that may potentially predict URV were not extensively collected. On the basis of machine learning, an adequate amount of variables is necessary for the decision tree, so that critical decision nodes can be suggested. The integrity of the variables is another weakness of the study. For example, we eliminated SpO2 because of missing data. Some of the records of the patients visiting the ED were missing because of the urgency of the emergency. There might exist a potential hospital-based selection bias in the study because the data were chart-reviewed from the NCKU hospital, a medical center in South Taiwan. A nationwide survey is suggested to obtain representative results in future.
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