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Article

Patient Factors and Their Effect on Operating Room Time for Urologic Procedures

1
University of Toledo Medical School, The University of Toledo College of Medicine and Life Sciences, Toledo, OH 43614, USA
2
Department of Urology, The University of Toledo College of Medicine and Life Sciences, Toledo, OH 43614, USA
3
Department of Population Health, The University of Toledo College of Medicine and Life Sciences, Toledo, OH 43614, USA
4
Department of Anesthesiology, The University of Toledo College of Medicine and Life Sciences, Toledo, OH 43614, USA
*
Author to whom correspondence should be addressed.
Submission received: 22 December 2023 / Revised: 28 February 2024 / Accepted: 29 February 2024 / Published: 4 March 2024

Abstract

:
Introduction: We examined three patient characteristics: body mass index (BMI), the American Society of Anesthesiologists (ASA) status, and pre-admission testing (PAT), and their effect on total operating room (OR) time for six urologic procedures, including ureteroscopy, transurethral resection of the prostate (TURP), transurethral resection of bladder tumor (TURBT), prostatectomy, nephrectomy, and kidney transplants. Methods: We investigated the effect of these patient factors on OR time using linear regression for urologic procedures from The University of Toledo Medical Center from 2015 to 2020. Results: An increase in BMI was found to correlate with a statistically significant increase in total OR time for ureteroscopy, prostatectomy, and kidney transplant. The PAT showed a decrease in OR time for TURBT cases and an increase for kidney transplant cases. We found no correlation between the ASA status and changes in the total OR time. Conclusions: A higher BMI significantly increases the total OR time for robotic-assisted prostatectomy and kidney transplant but has a minimal effect on endoscopic procedures. Our results do not support ASA status as a predictor of total OR time. Due to the lack of consistency in results for PAT for the different procedures analyzed, further exploration of the effect of this patient factor on OR efficiency is needed.

1. Introduction

As surgical care accounts for nearly one-third of all US healthcare spendings, and surgery departments in hospitals may account for one-third or more of hospital revenue, surgical operational performance is directly reflected through financial performance [1,2]. A study of hospitals in California found that the average cost for every minute within the operating room (OR) was USD 37, highlighting that the largest potential for cost reduction is through surgical means [1,3]. It was found that wasting a minute in the OR can cost upward of USD 100 per minute based on case complexity [4]. Factors such as scheduling delays, case cancellations, and increased operational duration can all have a negative impact on the efficiency and productivity of the OR and therefore the financial performance of the hospital system. However, research that addresses the factors that enhance or inhibit OR productivity during urologic procedures is scarce.
Here, our goal was to identify factors that enhance productivity and affect efficiency in the operating room. In this study, we examined the effects of three patient characteristics: body mass index (BMI), the American Society of Anesthesiologists (ASA) status, and pre-admission testing (PAT) on six urologic procedures, including ureteroscopy, transurethral resection of the prostate (TURP), and transurethral resection of bladder tumor (TURBT), prostatectomy, nephrectomy, and kidney transplants.
Obesity is defined as having a BMI ≥ 30 kg/m2 that currently afflicts over 40% of the adult population in the US [5]. BMI is categorized into multiple ranges, with a BMI less than 18.5 considered underweight, a BMI of 18.5 to 25 considered healthy, and a BMI of 25 to 30 considered overweight. Obesity is subdivided into categories as well, with a BMI of 30 to 35 considered Class I obesity, a BMI of 35 to 40 considered Class II obesity, and a BMI of 40 or higher considered Class III obesity. Estimates predict that the prevalence of obesity may rise to nearly 50% by the year 2030 [6]. Obesity also significantly increases the risk of developing many diseases which include hypertension, type 2 diabetes mellitus, fatty liver disease, and even some cancers [7]. Surgeons may be reluctant to operate on obese patients due to technical difficulties and higher rates of complication within this population. In one study, morbid obesity was associated with a significant increase in the overall time to perform total hip arthroplasty [8].
The American Society of Anesthesiologists (ASA) status is a simple classification system that is used to allow for the preoperative health and risk status of surgical patients to be summarized and compared [9]. The ASA status classification has been found to be strongly correlated with outcomes, either independently or in conjunction with other information [10,11,12]. Classification ranges from I to VI from a healthy patient to a patient who is a brain-dead organ donor [9]. There are a lack of studies analyzing the effect of the ASA status on operating room time specifically for urologic procedures.
Pre-admission testing (PAT) looks to identify the risk factors with increased intra- and postoperative complications in patients [13]. Services can include blood tests, EKGs, medication screening, medication review, and health evaluation. PAT by the anesthesiology team before surgery prevents unnecessary investigation and consultations that can potentially delay or cancel surgeries and has been found to increase efficiency in the OR and financially benefit hospitals [14]. Patients with a higher ASA status benefit from PAT testing for work-up due to the added complexity in their intraoperative care.
We hypothesize that an increase in BMI, ASA status, and use of pre-admission testing will correlate with an increase in OR time. Analyzing and discovering factors that influence operating room time may help reduce turnover time and lead to improved efficiency in the OR, benefiting the hospital, staff, and patients alike.

2. Methods

2.1. Participation Identification and Data Collection

In this cross-sectional study, after the IRB approval (UT IRB #200802) was obtained, we retrospectively reviewed patient records to identify urologic procedures performed at the University of Toledo Medical Center from 2015 to 2020. BMI, ASA status, and PAT, as well as total operating room time were recorded for all procedures. Patient demographic and clinical information was collected from electronic medical records. The data collected include case procedure type, the surgeon who performed the procedure, total operating room time, whether the patient underwent pre-admission testing, the ASA status of the patient, and the patient’s BMI. Any case type where less than 5 surgeries were performed by a surgeon or if the surgeon had less than 3 months of available data were excluded. Cases that did not have a reported BMI, PAT, or ASA status were not included. Only robotic-assisted prostatectomy cases were included as the number of cases that utilized other prostatectomy methods was low (n < 30). The total operating room time was defined as the time between patient entry into the OR and patient exit from the OR. The sample size was limited to available cases at this medical center meeting the inclusion criteria.

2.2. Statistical Analysis

Descriptive statistics were calculated using N, percentages, medians, interquartile ranges, means, and standard deviations where appropriate. The OR time was log-transformed to meet the normality assumption. We used multiple linear regression to examine the potential predictors of the log OR time. IBM SPSS Statistics Version 28.0.1.1 software was used for all analyses. We considered the following variables as the potential predictors for the log OR time: BMI, ASA status, and PAT. BMI was categorized into six categories. Underweight contained any cases with a BMI under 18.5. Overweight contained cases with a BMI between 25 and 30. Obesity Class I included BMIs between 30 and 35, Class II included BMIs between 35 and 40, and Class III included BMIs 40 or higher. Healthy weight range (BMI between 18.5 and 25) was considered the reference category. Each ASA class was compared to the lowest ASA class available for each procedure. A p-value less than 0.05 was considered statistically significant.

3. Results

A total of 316 ureteroscopies, 146 TURPs, 182 TURBTs, 148 prostatectomies, 226 nephrectomies, and 428 kidney transplants were analyzed (Table 1).

3.1. Ureteroscopy

For the 316 cases, the mean BMI was 32, the majority of cases had an ASA status of class II or III, and 116 patients had pre-admission testing performed. The mean total operating room time was 97 min. The underweight BMI category was found to be significant (p-value = 0.024), with a 48.7% decrease in total OR time compared with the healthy weight range (Table 2). PAT was not found to have a significant time difference (p-value = 0.222). The overweight, Class I, Class II, and Class III BMI categories were not found to have a significant time difference (p-values = 0.488, 0.846, 0.344, 0.059, respectively). ASA II, ASA III, and ASA IV were not found to have a significant time difference (p-value = 0.729, 0.617, 0.378, respectively).

3.2. Transurethral Resection of the Prostate

For the 146 cases, the mean BMI was 29, the majority of cases had an ASA status of class III, and 76 patients had pre-admission testing performed. The mean total operating room time was 106 min. TURP did not exhibit a statistically significant time difference with any of the BMI or ASA categories (Table 3). The underweight class is not represented in the table, as no cases were classified as underweight.

3.3. Transurethral Resection of Bladder Tumors

For the 182 cases, the mean BMI was 29, the majority of cases had an ASA status of Class III, and 82 patients had pre-admission testing performed. The mean total operating room time was 83 min. PAT significantly impacted the OR time (p-value = 0.009), with a 17.1% decrease in the total OR time compared to cases without PAT (Table 4). There were no ASA Class I cases. Therefore, the OR times for ASA Class III and IV are compared with ASA class II. The underweight, overweight, Class I, Class II, and Class III BMI categories were not found to have a significant time difference (p-values = 0.951, 0.517, 0.138, 0.320, 0.869, respectively). ASA III and ASA IV were not found to have a significant time difference (p-value = 0.632, 0.152, respectively).

3.4. Prostatectomy (Robotic-Assisted)

For the 148 cases, the mean BMI was 29, the majority of cases had an ASA status of Class II or Class III, and 106 patients had pre-admission testing performed. The mean total operating room time was 364 min. BMI Class I, Class II, and Class III were statistically significant, with p-values of 0.002, 0.019, and 0.016, respectively (Table 5). BMI Class I showed a 31.7% increase in the total OR time compared to the healthy weight range. BMI Class II showed a 24.6% increase in the total OR time compared to Class I. BMI Class III showed a 21.3% increase in the total OR time compared to Class I. PAT was not found to have a statistically significant time difference (p-value = 0.166). The underweight and overweight BMI categories were also not found to have a statistically significant time difference (p-value = 0.738, 0.568, respectively). None of the ASA classes were found to have a statistically significant time difference.

3.5. Nephrectomy

For the 226 cases, the mean BMI was 30, the majority of cases had an ASA status of Class II, and 137 patients had pre-admission testing performed. The mean total operating room time was 298 min. No associations were statistically significant (Table 6).
To explore nephrectomy cases further and determine any statistical significance between open nephrectomies, robotic-assisted nephrectomies using da Vinci, and laparoscopic nephrectomy cases, nephrectomy cases were stratified as such and analyzed. There were 31 open nephrectomy cases, with 10 that underwent PAT. There were 115 robotic-assisted nephrectomy cases, with 80 that underwent PAT. There were 80 laparoscopic nephrectomy cases, with 71 that underwent PAT.
For all three techniques, none of the associations were found to have a statistically significant time difference (Table 7, Table 8 and Table 9).

3.6. Kidney Transplant

For the cases, the mean BMI was 29, the majority of cases had an ASA status of Class III, and 53 cases had PAT performed. There were no cases with an ASA Class I, so the OR times for ASA Classes III and IV were compared with Class II. PAT showed a significant 10.3% increase in the total OR time (p-value = 0.010). Class I obesity showed a significant 9.42% increase in the total OR time (p-value = 0.008) and Class II was found to have a significant 19.7% increase in the OR time (p-value = 0.010) compared to healthy weight (Table 10). The underweight, overweight, and Class III BMI categories were not found to have a statistically significant time difference (p-value = 0.423, 0.065, 0.651, respectively). ASA III and ASA IV were not found to have a statistically significant time difference (p-value = 0.182, 0.250, respectively).

4. Discussion

Our analysis indicates that some patient factors had statistically significant effects on the total OR times of many urologic procedures. BMI was found to have a statistically significant time difference in ureteroscopy, prostatectomy, and kidney transplant procedures. ASA class was not found to have a statistically significant effect on the total OR time. PAT was found to have a statistically significant time difference in TURBT and kidney transplant procedures.
Obesity has been associated with hypertension and type 2 diabetes mellitus, as well as many other health risks [15]. Furthermore, deviations in BMI are also associated with surgical complications. Many earlier studies investigated BMI and its effects on the outcomes of urologic procedures. One such study found that complications following radical cystectomy occurred at an increasingly higher rate for patients with a higher BMI, with outcomes such as pulmonary, infectious, and bleeding complications [16]. While few studies investigated how BMI correlates with the total operating room time for urologic procedures, BMI was shown to affect operating time in many other surgical procedures. A retrospective study that observed 19,337 patients who underwent lobectomy found that for every 10-unit increase in BMI, there is a 7.2 min increase in the total operating room time [17]. However, another study found that BMI had no effect on operating room time for spinal fusions [18]. It is likely for results to differ when considering the type of procedure, the number of cases analyzed, and other factors such as surgeon experience and inclusion of various surgical procedures. Our study showed a statistically significant decrease in the total OR time for only the underweight category in ureteroscopy. As ureteroscopy is an endoscopic procedure, it is not surprising that the overall BMI would not have a significant effect on the total OR time. This also explains why BMI was not found to be significant in TURP and TURBT procedures. Although underweight was found to be statistically significant in ureteroscopy, it is also worth noting that there were relatively few underweight cases in our analysis. Our data also showed that BMI correlated with changes in the OR time for multiple categories in prostatectomy and kidney transplant procedures. Our data showed that a higher BMI correlates with an increased OR time for prostatectomy and kidney transplant procedures. Statistical significance was noted for Class I, Class II, and Class III obesity in prostatectomy, while BMI was statistically significant for both Class I and Class II obesity in kidney transplants. This supports our hypothesis that an increase in BMI would correlate with an increase in the OR time for open and robotic-assisted surgical procedures. Conclusions cannot be drawn about the effect of class III obesity in prostatectomy due to only having two cases in that category, despite being statistically significant. Likewise, statistical significance was likely not achieved across all BMI categories for these procedures due to the lower number of cases for each insignificant category. Generally, we noted that BMI categories that were statistically significant also had the highest number of cases among all BMI categories for that procedure.
ASA status has also been shown to affect operating room time for many types of procedures. In a study that analyzed 685 hand surgeries, it was shown that a decrease in ASA status led to a significant decrease in the OR time [19]. ASA Class IV was also found to double the anesthesia preparation time in children and triple it in adults [20]. Our study did not find a statistically significant difference for ASA in any of the categories for any procedure type. Factors that can impact the prolonged OR time of these higher ASA class patients include longer set-up times, more invasive monitoring, and an increased number of interactions and treatments during surgery to mitigate negative health outcomes. It is possible that the anesthesia team had more experience dealing with complications arising from urologic procedures and was therefore not significantly affected by ASA class. Furthermore, it may be that ASA class does not have a significant effect due to the varying factors that determine ASA class. Comorbidities that lead to an increase in ASA class may not necessarily correlate with an increase in the total OR time in the context of the procedures we analyzed. However, our results suggest that ASA class is not correlated with a significant increase in total OR time.
The goal of pre-admission testing is to facilitate perioperative decisions and mitigate unforeseen risks by informing providers of pertinent predispositions. While there is a lack of studies that analyze the role of pre-admission testing on operating room time, studies have shown that visits to preoperative clinics can reduce cancellations and delays in the operation [14,21]. Our findings regarding TURBT may support the use of PAT as a tool to improve OR efficiency at hospitals, while being contrary to our hypothesis. However, PAT significantly increased the total OR time in kidney transplant cases. This may be due to the various comorbidities found in prospective kidney transplant patients, which may contribute to prolonged operative durations [22]. Other procedures we analyzed were not found to be significant for PAT. Therefore, it is uncertain how effective PAT is for generally increasing efficiency in the OR.
Overall, our findings support factoring in BMI when it comes to operating room scheduling and resource planning for open and robotic-assisted urologic procedures. For patients with a higher BMI, it may be beneficial to plan for a longer case which may warrant increased billing. However, for endoscopic urologic procedures, our study shows that BMI does not have a strong correlation with operating room time. Therefore, resource planning would not need to consider BMI. While our findings support a correlation between BMI, ASA class, or pre-admission testing and the total OR time, this study included a single medical center with limited sample sizes. Furthermore, we did not take into account the surgical complexity of each procedure. There were also multiple surgeons for each procedure type, and in this study, we did not consider the level of experience of the operating teams performing the procedure. To confirm these correlations, additional observational studies and large-scale randomized trials to compare these parameters and confirm the extent of their effects in improving efficiency in the OR more accurately are needed. Additionally, future studies should look to delineate the impacts that additional variables play on surgical time in urological procedures such as case complexity, surgeon experience, or case factors such as prostate volume in TURP and stone location and size in ureteroscopy. Future studies could also investigate the correlation of these patient factors on pure surgical time.

5. Conclusions

BMI, ASA status, and pre-admission vary in their effects on urologic procedures. A higher BMI significantly increases the total OR time for open and robotic-assisted surgical procedures but has a minimal effect on endoscopic procedures. ASA status was not found to correlate with statistically significant differences in the total OR time for any procedures, which calls into question whether this can be used as an accurate predictor of the total OR time. Likewise, while PAT has also been shown to correlate with changes in the total OR time, it is unclear from our study whether the use of PAT correlates with an increase or decrease in OR time, and would require further studies to draw definitive conclusions.

Author Contributions

Conceptualization, A.B.C. and P.S.; Formal analysis, W.-S.L.; Investigation, W.-S.L.; Methodology, W.-S.L., B.S., A.B.C. and P.S.; Project administration, N.N.; Software, B.S.; Supervision, N.N., A.B.C. and P.S.; Validation, A.B.C. and P.S.; Visualization, W.-S.L.; Writing—original draft, W.-S.L. and A.Z.; Writing—review and editing, W.-S.L., A.Z., B.S., A.B.C. and P.S. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

This study was conducted in accordance with the Declaration of Helsinki, and approved by the Institutional Review Board of The University of Toledo, UT IRB #200802, Approval Date: 22 September 2020.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data can be provided upon request.

Conflicts of Interest

The authors declare no conflicts of interest.

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Table 1. Number of cases and total operating room time for each procedure type.
Table 1. Number of cases and total operating room time for each procedure type.
No. CasesMedian
(min)
Longest OR Time (min)Shortest OR Time (min)IQR
Ureteroscopy31693.54203554.7
TURP1461042995157.5
TURBT18282.02612851.0
Prostatectomy150326880167223
Nephrectomy22630083358131
Kidney Transplant428303766169113
TURP = transurethral resection of the prostate; TURBT = transurethral resection of bladder tumor; No. Cases = number of cases; OR = operating room; IQR = interquartile range.
Table 2. Linear regression analysis of patients who underwent ureteroscopy.
Table 2. Linear regression analysis of patients who underwent ureteroscopy.
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound (%)Upper Bound (%)p-Value
PAT
No (ref.)
Yes1160.0590.0486.07−3.6716.60.222
BMI
Healthy (ref.)
Underweight6−0.3970.175−48.7−110−5.330.024
Overweight78−0.0520.075−5.33−22.010.00.488
Class I710.0150.0761.51−14.317.80.846
Class II59−0.0750.079−7.79−26.18.440.344
Class III520.1570.08317.0−0.6037.70.059
ASA Status
ASA I (ref.)
ASA II1330.0390.1123.98−19.829.40.729
ASA III1610.0560.1125.76−17.831.90.617
ASA IV110.1480.16716.0−20.061.10.378
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
Table 3. Linear regression analysis of patients who underwent a transurethral resection of the prostate (TURP).
Table 3. Linear regression analysis of patients who underwent a transurethral resection of the prostate (TURP).
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound
(%)
Upper Bound
(%)
p-Value
PAT
No (ref.)
Yes76−0.0620.059−6.39−19.55.550.296
BMI
Healthy (ref.)
Overweight
Class I39−0.1100.086−11.6−32.26.180.204
Class II14−0.1820.110−20.0−49.03.460.098
Class III50.1230.16313.1−22.156.20.453
ASA Status
ASA I (ref.)
ASA II460.2380.20226.9−17.689.10.241
ASA III900.2500.20128.4−15.891.20.215
ASA IV7−0.0180.233−1.82−61.455.70.939
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
Table 4. Linear regression analysis of patients who underwent a transurethral resection of the bladder tumor (TURBT).
Table 4. Linear regression analysis of patients who underwent a transurethral resection of the bladder tumor (TURBT).
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound
(%)
Upper Bound
(%)
p-Value
PAT
No (ref.)
Yes82−0.1580.059−17.1−31.6−4.020.009
BMI
Healthy (ref.)
Underweight6−0.0100.164−1.01−39.536.80.951
Overweight64−0.0520.079−5.33−23.111.10.517
Class I380.1340.09014.3−4.3936.50.138
Class II220.1060.10611.1−11.037.20.320
Class III11−0.0230.137−2.33−34.228.30.869
ASA Status
ASA II (ref.)
ASA III138−0.0380.080−3.87−21.712.60.632
ASA IV130.1910.13321.0−7.3657.50.152
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
Table 5. Linear regression analysis of patients who underwent robotic-assisted prostatectomy.
Table 5. Linear regression analysis of patients who underwent robotic-assisted prostatectomy.
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound
(%)
Upper Bound
(%)
p-Value
PAT
No (ref.)
Yes106−0.1320.068−16.4−30.50.200.053
BMI
Healthy (ref.)
Underweight1−0.1300.374−2.74−13884.00.729
Overweight640.0480.0846.18−12.523.70.569
Class I370.2930.09337.711.461.10.002
Class II180.2710.11424.64.7164.20.019
Class III20.6550.26921.313.02280.016
ASA Status
ASA I (ref.)
ASA II590.1450.14719.8−15.654.70.324
ASA III810.2780.14642.3−1.0176.10.059
ASA IV3−0.3720.29511.6−23.51600.209
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
Table 6. Linear regression analysis of patients who underwent nephrectomy.
Table 6. Linear regression analysis of patients who underwent nephrectomy.
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound
(%)
Upper Bound
(%)
p-Value
PAT
No (ref.)
Yes1370.0050.0550.501−11.012.10.924
BMI
Healthy (ref.)
Underweight3−0.1610.226−17.5−83.332.80.476
Overweight600.0690.0717.14−7.4723.20.336
Class I620.1170.07312.4−2.6329.80.109
Class II260.0380.0943.87−15.725.00.683
Class III170.0820.1098.55−14.2234.60.453
ASA Status
ASA I (ref.)
ASA II69−0.0360.079−3.67−21.012.60.645
ASA III1010.0640.0776.61−9.2024.00.407
ASA IV150.0730.1227.57−18.136.80.547
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
Table 7. Linear regression analysis of patients who underwent open nephrectomy.
Table 7. Linear regression analysis of patients who underwent open nephrectomy.
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound
(%)
Upper Bound
(%)
p-Value
PAT
No (ref.)
Yes100.1980.32417.4−60.21380.546
BMI
Healthy (ref.)
Underweight80.1720.32013.8−63.11300.595
Overweight90.3840.30935.3−29.01780.226
Class I10.8520.72129.7−89.39410.249
Class II2−0.1420.573−6.18−2761830.806
Class III180.0580.3545.02−96.21200.872
ASA Status
ASA I (ref.)
ASA II8−0.0690.413−5.34−1521190.868
ASA III100.1980.32417.4−60.21380.546
ASA IV80.1720.32013.8−63.11300.595
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
Table 8. Linear regression analysis of patients who underwent Da Vinci-assisted nephrectomy.
Table 8. Linear regression analysis of patients who underwent Da Vinci-assisted nephrectomy.
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound
(%)
Upper Bound
(%)
p-Value
PAT
No (ref.)
Yes800.0010.0920.20−13.113.30.987
BMI
Healthy (ref.)
Overweight35−0.1350.063−23.4−34.62.630.099
Class I290.0160.0812.43−16.820.70.849
Class II17−0.1650.101−21.8−44.13.670.107
Class III11−0.0510.117−5.23−32.719.80.664
ASA Status
ASA I (ref.)
ASA II40−0.0220.082−3.56−20.315.00.788
ASA III480.0180.0853.05−16.320.60.831
ASA IV50.0610.1524.29−27.143.60.687
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
Table 9. Linear regression analysis of patients who underwent laparoscopic nephrectomy.
Table 9. Linear regression analysis of patients who underwent laparoscopic nephrectomy.
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound
(%)
Upper Bound
(%)
p-Value
PAT
No (ref.)
Yes71−0.1250.083−19.7−33.84.190.138
BMI
Healthy (ref.)
Overweight3−0.0270.210−1.51−56.047.80.897
Class I280.1700.10922.8−4.8147.40.122
Class II400.0730.10610.3−14.933.00.495
Class III120.0820.1427.47−22.343.90.566
ASA Status
ASA I (ref.)
ASA II60.0280.2011.82−45.453.70.890
ASA III35−0.0980.116−14.1−38.814.10.400
ASA IV600.0770.10611.9−14.533.50.473
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
Table 10. Linear regression analysis of patients who underwent a kidney transplant.
Table 10. Linear regression analysis of patients who underwent a kidney transplant.
No. CasesBetaCoefficient Std. ErrorTime Difference (%)Lower Bound
(%)
Upper Bound
(%)
p-Value
PAT
No (ref.)
Yes530.0980.03810.32.4318.90.010
BMI
Healthy (ref.)
Underweight9−0.0760.094−7.90−29.811.60.423
Overweight1620.0590.0326.080.00413.10.065
Class I1230.0900.0349.422.3317.00.008
Class II160.1800.06919.74.3937.20.010
Class III4−0.0590.131−6.08−37.222.00.651
ASA Status
ASA II (ref.)
ASA III43−0.1730.129−18.9−53.18.440.182
ASA IV10−0.1530.133−16.5−51.311.40.250
PAT = pre-admission testing; BMI = body mass index; ref. = reference; ASA = American Society of Anesthesiologists; No. Cases = number of cases; Time Difference (%) = percentage of time difference compared to reference group; Lower Bound (%) = 95% confidence lower bound; Upper Bound (%) = 95% confidence upper bound.
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Lu, W.-S.; Zia, A.; Nadiminty, N.; Saltzman, B.; Casabianca, A.B.; Sindhwani, P. Patient Factors and Their Effect on Operating Room Time for Urologic Procedures. Uro 2024, 4, 12-22. https://doi.org/10.3390/uro4010002

AMA Style

Lu W-S, Zia A, Nadiminty N, Saltzman B, Casabianca AB, Sindhwani P. Patient Factors and Their Effect on Operating Room Time for Urologic Procedures. Uro. 2024; 4(1):12-22. https://doi.org/10.3390/uro4010002

Chicago/Turabian Style

Lu, Wei-Shin, Ali Zia, Nagalakshmi Nadiminty, Barbara Saltzman, Andrew B. Casabianca, and Puneet Sindhwani. 2024. "Patient Factors and Their Effect on Operating Room Time for Urologic Procedures" Uro 4, no. 1: 12-22. https://doi.org/10.3390/uro4010002

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