Literature DB >> 33532330

Preoperative prognostic nomogram for prophylactic steroid treatment of patients with subclinical Cushing's syndrome.

Dengqiang Lin1, Jinglai Lin1, Xiaoyi Hu2, Yujun Liu2, Jianping Zhang2, Li Zhang2, Jingjing Jiang3, Xiaomu Li3, Jianming Guo2.   

Abstract

BACKGROUND: Subclinical Cushing's syndrome (SCS) is incidentally detected in a growing number of patients by advanced imaging technology. However, there is no consensus on the clinical management of SCS, especially in terms of whether prophylactic steroid treatment is necessary following adrenalectomy. In this study we developed a model based on preoperative indices for predicting postoperative adrenal insufficiency (AI) that can guide therapeutic decision-making.
METHODS: A total of 27 patients with SCS who underwent adrenalectomy between August 2016 and August 2019 were enrolled and divided into AI and non-AI groups. Cox proportional hazards regression and least absolute shrinkage and selection operator analyses were performed to select relevant clinical parameters. The predictive performance of our model was evaluated by time-dependent receiver operating characteristic (ROC) curve and calibration curve analyses.
RESULTS: Five clinical parameters (apolipoprotein A1, neutrophil-lymphocyte ratio, total cholesterol, platelet count, and homocysteine) were identified as the best predictors of replacement therapy (RT). The areas under the ROC curve for our prognostic model were 0.833, 0.945, and 0.967 for 3-, 4-, and 5-day non-(N)RT, respectively. The calibration curve of the 5 independent RT-related markers showed a good fit between nomogram-predicted probability of NRT and actual NRT, suggesting that our model has good predictive value.
CONCLUSIONS: Our prognostic nomogram can help clinicians identify patients with AI who would benefit from RT so that timely treatment can be initiated. KEYWORDS: Subclinical Cushing's syndrome (SCS); Replacement therapy (RT); Adrenal insufficiency (AI); Nomogram; Receiver operating characteristic (ROC). 2021 Translational Andrology and Urology. All rights reserved.

Entities:  

Year:  2021        PMID: 33532330      PMCID: PMC7844482          DOI: 10.21037/tau-20-1108

Source DB:  PubMed          Journal:  Transl Androl Urol        ISSN: 2223-4683


Introduction

With the development and extensive application of advanced imaging technologies such as ultrasound, computed tomography, and magnetic resonance imaging, an increasing number of adrenal incidentalomas are discovered in association with unrelated disorders, with a prevalence of 4–7% (1,2). Up to 50% of patients with adrenal incidentalomas may have hypercortisolism; the vast majority of such cases are subclinical Cushing’s syndrome (SCS) (3,4), which is characterized by abnormal biochemical indices of the hypothalamic–pituitary–adrenal (HPA) axis without the overt manifestations (e.g., moon face, buffalo hump, central obesity, plethora, striae rubrae, proximal myopathy, supraclavicular fat pad, thin skin, easy bruising, and unexplained osteoporosis or bone fractures) of Cushing’s syndrome (CS) (5-9). Diabetes mellitus (DM), cardiovascular events, hypertension, and vertebral fractures are common in patients with SCS (8,10,11). There is no consensus on the clinical management of SCS (3,7); because of the absence of classic phenotypic features of CS, standard diagnostic tests for the latter are not applicable to SCS diagnosis (3). It is also unclear which treatment strategy [surgery or conservative (i.e., pharmacologic) treatment] should be considered first or which therapeutic regimen should be adopted prior to or following adrenalectomy (3). Compared to a conservative approach, adrenalectomy can effectively alleviate metabolic disturbances caused by SCS but may lead to adrenal insufficiency (AI) (12-17). Irrespective of cortisol level and the severity of hypercortisolism, most clinicians administer replacement therapy (RT) before, during, and after adrenalectomy (15,18-23); however, some only provide RT when serum cortisol concentration is <5 µg/dL (138 nmol/L) and/or when cosyntropin stimulation level is <18 µg/dL (497 nmol/L) in the morning after adrenalectomy (24), or to patients with plasma hypocortisolism or AI post surgery (25,26). In our medical team, hydrocortisone (200 mg) is intravenously administered once for AI. Given that acute Addisonian crisis is potentially fatal if untreated (26,27), timely identification of these patients is critical for avoiding adverse events. The probability of developing postoperative AI is greater in patients with preoperative 1-mg dexamethasone suppression test (DST) >5 µg/dL (28). Reduced plasma adrenocorticotropic hormone (ACTH) concentration is a candidate marker for AI (29), but is by itself insufficient for diagnosis. Given the relationship between cortisol and inflammation as well as metabolism (i.e., of carbohydrates, lipids, and proteins), in this study we developed a quantitative predictive nomogram for postoperative RT based on a combination of multiple clinical indicators. We present the following article in accordance with the TRIPOD reporting checklist (available at http://dx.doi.org/10.21037/tau-20-1108).

Methods

Patients and inclusion criteria

This study was conducted in accordance with Declaration of Helsinki (as revised in 2013). Following approval by Ethics Committee of Zhongshan Hospital affiliated to Fudan University in China (No.2010-70), because of the retrospective nature of the research, the requirement for informed consent was waived. We collected clinical information of 40 patients who underwent adrenalectomy between August 2016 and August 2019 at the Department of Urology of Zhongshan Hospital affiliated with the Medical School of Fudan University in China, and who were subsequently diagnosed with SCS. The inclusion criteria were as follows: (I) adrenal masses detected by imaging; (II) no classic clinical manifestations of CS (i.e., dorsocervical fat pads, moon facies, abdominal striae, proximal myopathy, easy bruising); (III) excess serum or urine cortisol, altered circadian rhythm, or failed DST; (IV) underwent surgery and had a confirmed diagnosis of adrenal adenoma. The study ultimately enrolled 27 patients, who were divided into postsurgical AI (n=9) and non-postsurgical NAI (n=18) groups after adrenalectomy according to the manifestation of specific symptoms. Because of the retrospective nature of the research, the requirement for informed consent was waived. Because glucocorticoids can affect inflammation, we obtained data on inflammatory markers including neutrophil-lymphocyte ratio (NLR), derived (d)NLR, lymphocyte–monocyte ratio (LMR), platelet–lymphocyte ratio (PLR), a combination of platelet count and NLR, and prognostic nutritional index (30).

Statistical analysis

Statistical analyses were performed with SPSS v23 (SPSS Inc., Chicago, IL, USA) or R v3.60 software. Data are presented as mean ± standard deviation. Comparisons between 2 groups were carried out with the t test or chi-squared test. Kaplan–Meier survival plots were generated along with the log-rank statistic using the survival package of R software. We selected prognosis-related clinical parameters by univariate Cox proportional hazards regression (CPHR) analysis using the survival package of R software. CPHR is the most commonly used approach for analyzing survival data but is not suitable for multidimensional datasets (31). Therefore, using the glmnet package of R software, we applied the least absolute shrinkage and selection operator (LASSO) method for variable selection and shrinkage, which reduced coefficients toward zero along with the variance of these estimates (32). Finally, we constructed a model based on multiple clinical parameters identified by the LASSO method and multivariate CPHR to predict the therapeutic schedules of patients with SCS following adrenalectomy, which was visualized as a nomogram using the rms package of R software. A time-dependent receiver operating characteristic (ROC) curve and calibration curve were generated to assess the predictive performance of our model using the time ROC and rms packages, respectively, of R software. P values <0.05 were considered statistically significant except in univariate CPHR analysis, in which the significance level was set as P<0.1.

Results

General characteristics of the study population

Based on the above inclusion criteria, 27 patients diagnosed with SCS were enrolled in the study; their demographic characteristics are shown in . Most patients were female (96.30%, 26/27) and had left adrenal gland involvement (81.48%, 22/27). The proportion with hypertension and diabetes were 9/27 (AI, n=3 and NAI, n=6) and 2/27 (AI, n=1 and NAI, n=1), respectively. In all but 2 cases (both with hypertension), the maximum tumor diameter was ≥2 cm.
Table 1

Clinical characteristics of patients

ParameterAllPostsurgical AINon-postsurgical AIP value
Total number, N27918
Gender0.5361
   Male, n101
   Female, n26917
Age, years55.15±11.0853.44±13.4356.00±10.020.5820
Height, cm157.18±5.55157.83±5.56156.88±5.740.7392
Weight, kg63.44±5.6063.78±3.4963.28±6.530.8635
BMI, kg/m225.80±3.2625.65±1.7825.87±3.820.8958
Systolic BP, mmHg132.81±35.09137.89±18.39130.28±17.360.3022
Diastolic BP, mmHg80.81±23.0583.11±13.8379.67±11.110.4907
Hypertension9 (33.33%)3 (33.33%)6 (33.33%)>0.9999
Diabetes2 (7.41%)1 (11.11%)1 (11.11%)>0.9999
Tumor location0.6991
   Left22 (81.48%)8 (88.89%)14 (77.78%)
   Right4 (14.81%)1 (11.11%)3 (16.67%)
   Bilateral1 (3.70%)0 (0%)1 (5.56%)
Primary tumor size, cm0.7650
   ≤2.08 (29.63%)2 (22.22%)6 (33.33%)
   2.0–3.07 (25.93%)3 (33.33%)4 (22.22%)
   ≥3.012 (44.44%)4 (44.44%)8 (44.44%)
Mean tumor diameter, cm3.03±1.372.86±0.763.12±1.600.6502
Operation>0.9999
   LTA21 (77.77%)7 (77.78%)14 (77.78%)
   LPA6 (22.22%)2 (22.22%)4 (22.22%)
Follow-up time*, h174.81±84.6092.44±26.06216.00±72.37P<0.0001

Data are shown as mean ± SD or number (%) unless otherwise indicated. *, from the time of operation to the time of discharge or replacement therapy. AI, adrenal insufficiency; BMI, body mass index; BP, blood pressure; LPA, laparoscopic partial adrenalectomy; LTA, laparoscopic total adrenalectomy.

Data are shown as mean ± SD or number (%) unless otherwise indicated. *, from the time of operation to the time of discharge or replacement therapy. AI, adrenal insufficiency; BMI, body mass index; BP, blood pressure; LPA, laparoscopic partial adrenalectomy; LTA, laparoscopic total adrenalectomy.

Differences in clinical parameters between NI and NAI groups

Nine patients were diagnosed with AI after surgery based on symptoms of hypotension, hypoglycemia, fatigue, myalgia, lethargy, or fever (33). These patients were immediately given hormone RT and constituted the AI group. There were no differences in sex ratio, age (54.44±13.42 vs. 56.00±10.02), body mass index (BMI) (25.65±1.78 vs. 25.87±3.82), tumor location, or mean tumor diameter (2.86±0.76 vs. 3.12±1.60) between AI and NAI groups (P>0.05; ). The distribution of surgical approaches was also similar between the 2 groups (P>0.05), suggesting that total adrenalectomy was not the main cause of AI. In terms of cortisol level, only plasma cortisol at midnight (00:00) differed significantly between AI and NAI groups (P=0.0098), while no differences were observed in plasma cortisol levels at 08:00 and 16:00 or urine cortisol level. ATCH at 08:00 but not at 16:00 or 00:00 also showed a statistically significant difference between groups (P=0.0297; ).
Table 2

Hormone levels of patients at different times of the day

ParameterAllPostsurgical AINon-postsurgical AIP value
ACTH, <7.2 pg/mL
   08:0020/279/911/180.0297
   16:0021/258/813/170.1344
   00:0023/258/815/170.3118
Plasma cortisol level, mmol/L
   08:00372.84±126.43399.24±82.26359.63±143.900.4537
   16:00303.90±163.84338.76±125.99285.45±181.500.4411
   00:00210.97±112.12285.17±122.01169.23±83.740.0098
Urine cortisol, μg/24 h422.65±216.79473.55±312.40386.30±131.910.5181

AI, adrenal insufficiency; ACTH, adrenocorticotropic hormone.

AI, adrenal insufficiency; ACTH, adrenocorticotropic hormone. Glucocorticoids are a class of steroid hormones that affect inflammation, biomolecule metabolism (carbohydrate, lipid and protein), and electrolyte balance. We examined whether glucocorticoids differentially affected AI and NAI patients and found that only 1 index of inflammation—namely, NLR—differed between the AI (2.48±0.95) and NAI (1.72±0.63) groups (P=0.0198; ). On the other hand, multiple metabolic parameters differed between AI and NAI patients including total cholesterol (4.90±0.40 vs. 4.28±0.80, P=0.0391), high density lipoprotein (HDL) (1.61±0.30 vs. 1.25±0.27, P=0.0042), and apolipoprotein (Apo)A1 (1.63±0.19 vs. 1.37±0.26, P=0.0136) (). There were no differences between AI and NAI groups in terms of glucose metabolism, as measured by fasting blood sugar (4.99±0.33 vs. 5.17±0.66, P=0.4507), glycosylated hemoglobin (GH) (5.64±0.48 vs. 5.88±0.66, P=0.4014), and DM (1/9 vs. 1/18, P>0.9999). Similarly, calcium (2.21±0.15 vs. 2.16±1.05, P=0.8892), sodium (142.44±4.14 vs. 141.89±3.49, P=0.7196), potassium (4.13±0.42 vs. 4.03±0.88, P=0.7510), phosphorous (1.19±0.33 vs. 1.20±0.34, P=0.9426), and alkaline phosphatase (60.00±23.37 vs. 67.11±36.85, P=0.6038) were comparable between the 2 groups. Notably, over half of SCS patients had fatty liver (14/27, 51.85%).
Table 3

Inflammatory variables of patients

ParameterAll (N=27)Postsurgical AI (n=9)Non-postsurgical AI (n=18)P value
Leucocyte count, ×109/L6.22±1.826.29±2.146.18±1.700.8937
Neutrophil count, ×109/L3.61±1.483.93±1.703.45±1.370.4335
Monocyte count, ×109/L0.68±0.870.53±0.170.76±1.070.5358
Lymphocyte count, ×109/L1.92±0.531.64±0.512.06±0.500.0548
Platelet count, ×109/L251.67±70.13216.89±43.97269.06±75.180.0673
Eosinophil0.12±0.080.09±0.080.13±0.070.2219
Basophil0.04±0.030.04±0.040.04±0.020.8455
Albumin, g/L40.85±3.1340.78±1.7240.89±3.690.9328
NLR1.97±0.822.48±0.951.72±0.630.0198
dNLR1.42±0.551.70±0.641.28±0.450.0583
LMR3.76±1.453.24±1.174.02±1.540.1942
PNI50.44±3.5249.00±2.1451.17±3.880.1328
PLR139.48±52.44143.10±53.74137.67±53.250.8054

AI, adrenal insufficiency; NLR, neutrophil-lymphocyte ratio; dNLR, derived neutrophil-lymphocyte ratio; COP-NLR, combination of platelet count and neutrophil-lymphocyte ratio; LMR, lymphocyte–monocyte ratio; PNI, prognostic nutritional index; PLR, platelet-lymphocyte ratio.

Table 4

Biochemical parameters in patients

ParameterAll (N=27)Postsurgical AI (n=9)Non-postsurgical AI (n=18)P value
TC, mmol/L4.49±0.744.90±0.404.28±0.800.0391
TG, mmol/L1.51±1.291.07±0.271.73±1.530.2151
LDL, mmol/L2.46±0.742.81±0.492.29±0.70.0841
HDL, mmol/L1.37±0.321.61±0.301.25±0.270.0042
Non-HDL, mmol/L3.14±0.663.41±0.563.01±0.690.1450
ApoA1, g/L1.45±0.261.63±0.191.37±0.260.0136
ApoB, g/L0.87±0.170.94±0.110.84±0.180.1406
ApoE, mg/L41.74±11.8142.78±6.2041.22±13.940.7525
Lipoprotein, mg/L152.41±155.67102.56±116.01177.33±169.570.2469
Homocysteine, μmol/L9.65±3.598.13±2.7010.41±3.810.1225
Fatty liver14/275/99/18>0.9999
FBS, mmol/L5.11±0.574.99±0.335.17±0.660.4507
GH, %5.80±0.615.64±0.485.88±0.660.4014
Calcium, mmol/L2.18±1.482.21±0.152.16±1.050.8892
Sodium, mmol/L142.07±5.37142.44±4.14141.89±3.490.7196
Potassium, mmol/L4.07±1.264.13±0.424.03±0.880.7510
Phosphorus, mmol/L1.19±0.511.19±0.331.20±0.340.9426
ALP, U/L64.74±53.4560.00±23.3767.11±36.850.6038

AI, adrenal insufficiency; TC, total cholesterol; TG, triglyceride; LDL, low density lipoprotein; HDL, high density lipoprotein; ApoA1, apolipoprotein A1; ApoB, apolipoprotein B; ApoE, apolipoprotein E; FBS, fasting blood sugar; GH, glycosylated hemoglobin; ALP, alkaline phosphatase.

AI, adrenal insufficiency; NLR, neutrophil-lymphocyte ratio; dNLR, derived neutrophil-lymphocyte ratio; COP-NLR, combination of platelet count and neutrophil-lymphocyte ratio; LMR, lymphocyte–monocyte ratio; PNI, prognostic nutritional index; PLR, platelet-lymphocyte ratio. AI, adrenal insufficiency; TC, total cholesterol; TG, triglyceride; LDL, low density lipoprotein; HDL, high density lipoprotein; ApoA1, apolipoprotein A1; ApoB, apolipoprotein B; ApoE, apolipoprotein E; FBS, fasting blood sugar; GH, glycosylated hemoglobin; ALP, alkaline phosphatase.

Construction of a prognostic model based on clinical parameters

In order to identify SCS patients with postoperative AI who would benefit from RT, we considered the time of surgery and time discharge or RT as the starting and end points, respectively. Parameters for which there was incomplete information such as height, weight, BMI, GH, etc. were excluded. To avoid excluding some potentially important factors, differences with a P value <0.10 were considered significant in the univariate CPHR analysis. Nine clinical parameters were initially selected—namely, HDL, ApoA1, NLR, dNLR, total cholesterol, lymphocyte, homocysteine, eosinophil count, and platelet count (). To avoid bias from collinearity among factors, we applied the LASSO Cox regression model and penalized maximum likelihood method to select factors that could most accurately predict RT in patients. A combination of 5 clinical parameters (ApoA1, NLR, total cholesterol, platelet count, and homocysteine) were identified as the best predictors of RT (). These were used to calculate a risk score by multivariate CPHR (C-index=0.912, P=0.004). Total cholesterol had the highest hazard ratio (2660.76, P=0.045), followed by NLR (24.60, P=0.018) ( and ). Elevated total cholesterol (P=0.038), NLR (P=0.019), and ApoA1 (P<0.001) were correlated with postoperative treatment selection (). Based on the median risk score (0.86), patients with SCS were stratified into low-risk (risk score ≤0.86, n=14) and high-risk (risk score >0.86, n=13) groups; the latter patients were more likely to require RT ().
Table 5

Results of the Cox regression analysis

ParameterUnivariate CPHRMultivariate CPHRR
HRP valueHRP value
HDL37.020.0107
ApoA1141.250.01070.270.7013−1.3110
EOS0.650.0625
Homocysteine0.280.07490.190.1149−1.6525
NLR4.900.018624.600.01823.2029
dNLR3.970.0412
Total cholesterol48.970.05382660.760.04477.8864
Lymphocyte0.180.0518
PLT0.170.08630.130.1567−2.0593

CPHR, Cox proportional hazards regression; HR, hazard ratio; ApoA1, apolipoprotein A1; EOS, eosinophil count; NLR, neutrophil-lymphocyte ratio; dNLR, derived neutrophil-lymphocyte ratio; PLT, platelet count.

Figure 1

Best predictors of RT selected by LASSO analysis. (A) Screening path of the LASSO regression model. (B) Penalty parameter (log lambda) in the LASSO regression model. LASSO, least absolute shrinkage and selection operator.

Figure 2

Forest plot of hazard ratios for analyzed parameters.

Figure 3

Kaplan–Meier curves of overall NRT time distribution in patients stratified by different indices. (A) ApoA1. (B) Homocysteine. (C) Platelet count. (D) NLR. (E) Total cholesterol. (F) Risk score. NLR, neutrophil-lymphocyte ratio.

CPHR, Cox proportional hazards regression; HR, hazard ratio; ApoA1, apolipoprotein A1; EOS, eosinophil count; NLR, neutrophil-lymphocyte ratio; dNLR, derived neutrophil-lymphocyte ratio; PLT, platelet count. Best predictors of RT selected by LASSO analysis. (A) Screening path of the LASSO regression model. (B) Penalty parameter (log lambda) in the LASSO regression model. LASSO, least absolute shrinkage and selection operator. Forest plot of hazard ratios for analyzed parameters. Kaplan–Meier curves of overall NRT time distribution in patients stratified by different indices. (A) ApoA1. (B) Homocysteine. (C) Platelet count. (D) NLR. (E) Total cholesterol. (F) Risk score. NLR, neutrophil-lymphocyte ratio. We developed a nomogram based on the above 5 independent RT-related markers to predict 3-, 4-, and 5-day NRT probability (). The corresponding regression coefficients are shown in .
Figure 4

Nomogram based on the logarithm of 5 parameters predicting the probability of NRT after adrenalectomy.

Nomogram based on the logarithm of 5 parameters predicting the probability of NRT after adrenalectomy.

Prognostic performance of the developed nomogram

The area under the ROC curve (AUC) values in the time-dependent ROC curve analysis for our nomogram were 0.833 (95% CI: 66.01–100.00%) for 3-day NRT, 0.945 (95% CI: 86.19–100.00%) for 4-day NRT, and 0.967 (95% CI: 90.80–100.00%) for 5-day NRT (), indicating a good predictive performance for the model. This was confirmed by the calibration curve of the 5 independent RT-related markers, which showed a good fit between the nomogram-predicted probability of NRT and actual NRT ().
Figure 5

Evaluation of prognostic model performance. (A) ROC curve analysis. (B,C,D) Calibration curve. ROC, receiver operating characteristic.

Evaluation of prognostic model performance. (A) ROC curve analysis. (B,C,D) Calibration curve. ROC, receiver operating characteristic.

Discussion

Although autonomous and uncontrolled cortisol secretion without pituitary feedback occurs in SCS, certain signs or symptoms related to hypercortisolism such as weight gain, skin atrophy, and increased facial fullness are lacking. Nonetheless, arterial hypertension, obesity, and impaired glucose tolerance/DM are more frequently observed in patients with SCS compared to the general population (29). Current treatment options for SCS include surgery or conservative treatment. The former is considered when the tumor size is >2 cm or when there is hypertension or insulin resistance/impaired glucose tolerance/DM. Laparoscopic surgery is relatively safe and reliable. All patients with SCS in this study underwent laparoscopic adrenalectomy and there were no perioperative deaths or complications or postoperative laparotomy. This is consistent with other reports that laparoscopic adrenalectomy has relatively low incidences of morbidity and mortality (0% mortality, 6.3% morbidity, and conversion to laparotomy in 4.7% of cases) (34). The safety and reliability of laparoscopic adrenalectomy have been confirmed in other studies (35-37). Plasma ACTH, urinary free cortisol, and post-dexamethasone cortisol suppressibility in patients who underwent this procedure were normalized within 1 year along with DM in 62.5% (5/8, P=0.619), hypertension in 67% (12/18, P=0.046), and hyperlipidemia in 37.5% (3/8, P=0.619) of patients, as evidenced by symptom relief or a reduction in drug dose. In contrast, patients who received conservative treatment showed no symptom improvement and in some cases even required a dosage increase (34). Other studies reported similar findings (29,38-42), suggesting that patients with SCS receive more benefit from surgery (improved hypertension, DM, and hyperlipidemia as well as weight loss) than from a conservative treatment approach. Postoperative AI can be fatal if not treated in a timely manner (27,43,44). It remains unclear whether patients with SCS who undergo adrenalectomy require RT. Overtreatment with steroids can lead to severe infections or iatrogenic CS and suppress the HPA axis, thereby delaying its postoperative recovery (28,45-47). To avoid this risk, we developed a model based on a combination of 5 preoperative clinical parameters to identify patients at risk of postoperative AI who may require RT. The model—which includes ApoA1, NLR, total cholesterol, platelet count, and homocysteine—showed good prognostic performance, with AUC values ranging from 0.833 to 0.967 for 3- to 5-day NRT. The risk score based on the 5 parameters was used to divide patients into low- and high-risk groups; the latter were more likely to require RT, and should thus be closely monitored following surgery. Limitations of our study included the small sample size and the fact that steroid profile was not included in the model because of a lack of clinical data, except for plasma cortisol level at 08:00. Therefore, additional studies are needed to confirm the reliability of the nomogram and validate our conclusions.

Conclusions

We developed a nomogram based on 5 parameters (ApoA1, NLR, total cholesterol, platelet count, and homocysteine) that can help to identify CSC patients who are at risk for postoperative AI and would benefit from RT. The model showed good prognostic performance and is thus a useful clinical tool that can improve the outcome of CSC patients undergoing laparoscopic adrenalectomy. The article’s supplementary files as
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