Literature DB >> 34287774

Estimation of Admission D-dimer Cut-off Value to Predict Venous Thrombotic Events in Hospitalized COVID-19 Patients: Analysis of the SEMI-COVID-19 Registry.

Carles García-Cervera1, Vicente Giner-Galvañ1,2,3, Philip Wikman-Jorgensen4,5, Jaime Laureiro6, Manuel Rubio-Rivas7, Anthony Gurjian Arena8, Francisco Arnalich-Fernandez9, José Luis Beato Pérez10, Juan Antonio Vargas Núñez11, Jesús Javier González Igual12, Jesús Díez-Manglano13, Manuel Méndez Bailón14, María José García Blanco15, Santiago J Freire Castro16, Judit Aranda Lobo17, Luis Manzano18, Jeffrey Oskar Magallanes Gamboa19, Luis Arribas Pérez20, Julio González Moraleja21, Ruth Calderón Hernaiz22, Javier García Alegría23, Amara González Noya24, Ricardo Gómez Huelgas25, Carlos Lumbreras Bermejo6, Juan Miguel Antón Santos22.   

Abstract

BACKGROUND: Venous thrombotic events (VTE) are frequent in COVID-19, and elevated plasma D-dimer (pDd) and dyspnea are common in both entities.
OBJECTIVE: To determine the admission pDd cut-off value associated with in-hospital VTE in patients with COVID-19.
METHODS: Multicenter, retrospective study analyzing the at-admission pDd cut-off value to predict VTE and anticoagulation intensity along hospitalization due to COVID-19.
RESULTS: Among 9386 patients, 2.2% had VTE: 1.6% pulmonary embolism (PE), 0.4% deep vein thrombosis (DVT), and 0.2% both. Those with VTE had a higher prevalence of tachypnea (42.9% vs. 31.1%; p = 0.0005), basal O2 saturation <93% (45.4% vs. 33.1%; p = 0.0003), higher at admission pDd (median [IQR]: 1.4 [0.6-5.5] vs. 0.6 [0.4-1.2] μg/ml; p < 0.0001) and platelet count (median [IQR]: 208 [158-289] vs. 189 [148-245] platelets × 109/L; p = 0.0013). A pDd cut-off of 1.1 μg/ml showed specificity 72%, sensitivity 49%, positive predictive value (PPV) 4%, and negative predictive value (NPV) 99% for in-hospital VTE. A cut-off value of 4.7 μg/ml showed specificity of 95%, sensitivity of 27%, PPV of 9%, and NPV of 98%. Overall mortality was proportional to pDd value, with the lowest incidence for each pDd category depending on anticoagulation intensity: 26.3% for those with pDd >1.0 μg/ml treated with prophylactic dose (p < 0.0001), 28.8% for pDd for patients with pDd >2.0 μg/ml treated with intermediate dose (p = 0.0001), and 31.3% for those with pDd >3.0 μg/ml and full anticoagulation (p = 0.0183).
CONCLUSIONS: In hospitalized patients with COVID-19, a pDd value greater than 3.0 μg/ml can be considered to screen VTE and to consider full-dose anticoagulation.
© 2021. Society of General Internal Medicine.

Entities:  

Keywords:  COVID-19; D-dimer; SARS-CoV-2; deep vein thrombosis; pulmonary embolism; venous thrombotic event

Mesh:

Substances:

Year:  2021        PMID: 34287774      PMCID: PMC8294343          DOI: 10.1007/s11606-021-07017-8

Source DB:  PubMed          Journal:  J Gen Intern Med        ISSN: 0884-8734            Impact factor:   6.473


INTRODUCTION

Since the beginning of the novel coronavirus disease 2019 (COVID-19) outbreak, many studies have reported coagulation abnormalities and a higher incidence of venous thrombotic events (VTE) among these patients. A relationship between plasma D-dimer (pDd) >1.0 μg/ml and both the severity of the infection and a worse prognosis has also been described.[1-3] VTE has been detected in 3 to 46% of the patients with COVID-19, with the highest prevalence in patients in intensive care units (ICU).[4-17] These rates are higher than those reported in non-COVID-19 patients[18-20] and have been related to a higher mortality.[5] The diagnosis of VTE in patients with COVID-19 is challenging because its clinical manifestations and analytical findings can be misdiagnosed. The usual pDd cut-off value of 0.5 μg/ml[21,22] may not be useful and could lead to overdiagnosis and anticoagulation. For these reasons, some authors have tried to establish a higher pDd threshold, with different higher cut-off values.[10,14,16,17] However, these studies have several limitations, including small sample sizes, a lack of validation, and heterogeneity in methodology. The SEMI-COVID-19 Registry emerged as an initiative of the Spanish Society of Internal Medicine (SEMI, for its initials in Spanish) to improve the quality of treatment of hospitalized SARS-CoV-2-infected patients. A retrospective analysis of the data from the registry has been conducted to determine the optimal cut-off value of admission pDd to guide the diagnosis and treatment of VTE in these patients.

MATERIAL AND METHODS

The SEMI-COVID-19 Registry

The SEMI-COVID-19 Registry is an ongoing nationwide, multicenter (150 hospitals through the 17 regions of Spain), observational, retrospective cohort registry.[23] All consecutive hospitalized patients aged ≥18 years with confirmed SARS-CoV-2 infection, according to World Health Organization (WHO) recommendations[24] were eligible for inclusion. The exclusion criteria were subsequent admissions of the same patient and denial or withdrawal of informed consent. The admission and treatment of patients were at the discretion of the attending physicians. Personal data processing strictly complied with the applicable European Union and Spanish laws on biomedical research and personal data protection. The Registry has been approved by the Provincial Research Ethics Committee of Málaga (Spain) as per the recommendation of the Spanish Agency of Medicines and Medical Products (AEMPS, for its initials in Spanish). All patients gave informed consent. The conduct and reporting of the study were carried out pursuant to the STROBE statement guidelines.[25]

Procedures

A specific online electronic data capture system (DCS) was developed. Physicians from each participating hospital were responsible for acquiring and entering data. To ensure the quality of data collection, a database manager and data verification procedures were designed. Data monitoring, analysis, and logistics coordination were carried out by independent external agencies. The DCS did not contain any direct patient identifiers. A total of 321 variables were retrospectively collected. A full list of variables gathered can be found in the source paper.[23] The unadjusted and age-adjusted Charlson Comorbidity Index was calculated from the collected data.[26] A total of 13,403 consecutive patients were recruited from March 1 to June 4, 2020, when the last patient was included in the present substudy.

Objectives

The main objective was to establish a cut-off value of admission pDd associated with the development of in-hospital VTE in COVID-19 patients, to be used as a tool for ruling out this complication. As the secondary objective, a post-hoc analysis was undertaken to evaluate if anticoagulation intensity (prophylactic, intermediate, or therapeutic doses) was associated with admission pDd values and mortality.

Statistical Analysis

As can be seen in the patient inclusion flowchart (Fig. 1), patients without information on acute VTE during hospitalization and those without a registered at admission pDd value were excluded. The final sample comprised 9386 patients, and 66 variables were analyzed (Appendix 2).
Figure 1

Flowchart for the selection of the study population. DVT, deep venous thrombosis; PE, pulmonary embolism.

Flowchart for the selection of the study population. DVT, deep venous thrombosis; PE, pulmonary embolism. Patients were divided into two groups: those with an acute VTE episode (DVT and/or PE) anytime during hospitalization, and those in which it was registered that they had not suffered a VTE episode during hospitalization. Recording of venous thrombotic events in the Registry was declarative, categorical (Yes/No), and dependent on each participant physician criteria. Quantitative variables are expressed as medians (interquartile range) or means (SD). Categorical variables are expressed as absolute values and percentages. Categorical variables were compared using the chi-square test and quantitative variables using Student’s t test for variables with a normal distribution and the Mann-Whitney U test for non-parametric variables. The alpha significance level was established as 0.05, with the Bonferroni correction applied for multiple comparisons. A receiver operating characteristic (ROC) curve was generated to determine the sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) of admission pDd values to predict acute VTE during hospitalization. The optimal pDd cut-off value was estimated based on two criteria: iteration over a range of specificity values and maximization of product of sensitivity and specificity (accuracy area). Overall mortality in all the included patients was stratified according to pDd value categories, and the impact on this variable of different anticoagulation intensities was analyzed for each pDd category. Four categories of anticoagulation intensities were established: absent, low intensity, intermediate intensity, and full intensity, depending on the LMWH given during hospitalization. Definitions of LMWH dose categories are provided in Appendix 2. For patients in different pDd value categories, the overall mortality for each anticoagulation intensity was compared using the chi-square test. All statistical analyses were performed using the R Foundation for Statistical Computing.

RESULTS

Characteristics of the study population

According to the flowchart in Figure 1, 9386 patients were included in the analysis. Of them, 57.1% were male and the median age was 68.4 (interquartile range [IQR] 55–79) years. The prevalence of comorbidities was 16.1%, as measured by the Charlson age-adjusted Comorbidity Index (Table 1).
Table 1

Basal Characteristics of Included Patients

VariableAll patients (n = 9386)VTE group (n = 202)Non-VTE group (n = 9184)p*
Age (median [IQR]), years66.7 [55.8–79.0]69.4 [59.3–77.5]68.4 [55.7–77.0]0.4928
Male sex, n (%)5356 (57.1)121 (60.2)5235 (57.1)0.4152
HBP, n (%)4695 (50)101 (50.0)4594 (49.9)0.9999
DM, n (%)1749 (18.6)29 (14.4)1720 (18.7)0.9637
Dyslipidemia, n (%)3667 (39.1)8 (43.3)3580 (39.1)0.2537
Alcohol abuse, n (%)419 (4.4)15 (7.7)404 (4.5)0.0575
Smoking, n (%)0.5911
Former smoker2193 (23.4)51 (25.9)2142 (24.4)
Current smoker475 (5)13 (6.6)462 (5.3)
Dependence, n (%)0.1964
Absent/mild7802 (83.1)175 (87.9)7627 (84.0)
Moderate846 (9.0)11 (5.5)835 (9.2)
Severe631 (6.7)13 (6.5)618 (6.8)
Atrial fibrillation, n (%)984 (10.5)9 (4.5)975 (10.6)0.0064
Chronic anxiety, n (%)753 (8)20 (9.9)733 (8.0)0.3941
Chronic depression, n (%)981 (10.5)29 (14.4)952 (10.4)0.0879
Obesity, n (%)1795 (19.0)49 (25.8)1746 (20.7)0.1065
Neurodegenerative disease, n (%)801 (8.5)13 (6.5)788 (8.6)0.3479
Angina, n (%)321(3.4)6 (3.0)315 (3.4)0.8701
CHF, n (%)615 (6.5)11 (5.5)604 (6.6)0.6135
COPD, n (%)599 (6.3)10 (5.0)589 (6.4)0.4831
Asthma, n (%)720 (7.6)13 (6.5)410 (7.7)0.6014
TIA, n (%)420 (4.4)10 (5.0)410 (4.5)0.8796
Previous IS, n (%)246 (2.6)7 (3.5)239 (2.6)0.5941
Residual hemiplegia, n (%)151 (1.6)4 (2.0)147 (1.6)0.8819
Dementia, n (%)893 (9.5)17 (8.4)876 (9.6)0.6703
PVD, n (%)413 (4.4)11 (5.5)402 (4.4)0.5826
CLD, n (%)253 (0.2)245 (2.6)8 (3.9)0.3709
CKD, n (%)545 (5.8)11 (5.5)534 (5.8)0.9372
Active cancer, n (%)532 (5.6)21 (10.4)511 (5.6)0.0054
CTD, n (%)225 (2.3)7 (3.5)218 (2.4)0.4375
HIV infection, n (%)63 (0.6)0 (0)63 (0.7)0.9999
OSAS, n (%)575 (6.1)15 (7.5)560 (6.1)0.5313
CCI, Med. (IQR)1 [0–2]1 [0–2]1 [0–2]0.4388
CCI ≥3, n (%)1515 (16.1)36 (18.2)1479 (16.5)0.5814

VTE, venous thromboembolism; HBP, chronic high blood pressure; DM, diabetes mellitus; CHF, chronic heart failure; COPD, chronic obstructive pulmonary disease; TIA, transient ischemic accident; IS, ischemic stroke; PVD, peripheral vascular disease; CLD, chronic liver disease; CKD, chronic kidney disease; CTD, connective tissue disease; HIV, human immunodeficiency virus; OSAS, obstructive sleep apnea syndrome; CCI, age-adjusted Charlson Comorbidity Index; Med, median; IQR, interquartile range

*Comparison of VTE vs. non-VTE groups

Basal Characteristics of Included Patients VTE, venous thromboembolism; HBP, chronic high blood pressure; DM, diabetes mellitus; CHF, chronic heart failure; COPD, chronic obstructive pulmonary disease; TIA, transient ischemic accident; IS, ischemic stroke; PVD, peripheral vascular disease; CLD, chronic liver disease; CKD, chronic kidney disease; CTD, connective tissue disease; HIV, human immunodeficiency virus; OSAS, obstructive sleep apnea syndrome; CCI, age-adjusted Charlson Comorbidity Index; Med, median; IQR, interquartile range *Comparison of VTE vs. non-VTE groups Acute VTE during hospitalization occurred in 202 patients (2.2%): PE alone in 151 patients (1.6%), DVT alone in 37 patients (0.4%), and both DVT and PE in 14 patients (0.2%). The most frequent comorbidities in the VTE group were hypertension (50.0%), dyslipidemia (43.3%), diabetes mellitus (14.39%), and cancer (10.4%). Applying the Bonferroni correction, the significance level was established as 0.0007, and no significant differences were found between the groups regarding baseline demographic and clinical characteristics. Patients in the VTE group had a higher prevalence of tachypnea (42.9% vs. 31.1%; p = 0.0005) and basal oxygen saturation <93% (45.4% vs. 33.1%; p = 0.0003). A quick SOFA score greater than or equal to 2 points was found in 8.5% of all participants, with no significant differences between groups (Table 2).
Table 2

COVID-19-Related Clinical Variables of Included Patients

VariableAll patients (n = 9386)VTE group (n = 202)Non-VTE group (n = 9184)p*
Cough, n (%)0.8839
Dry5595 (59.6)122 (60.7)5473 (59.8)
Wet1342 (14.3)30 (14.9)1312 (14.3)
Myalgia, n (%)2858 (30.4)54 (27.1)2804 (30.8)0.3032
Ageusia, n (%)703 (7.4)17 (8.7)686 (7.6)0.6555
Anosmia, n (%)613 (6.5)14 (7.2)599 (6.7)0.8766
Asthenia, n (%)4085 (43.5)85 (42.9)4000 (44.0)0.8230
Anorexia, n (%)1788 (19.0)35 (17.7)1753 (19.4)0.6150
Odynophagia, n (%)900 (9.6)20 (10.2)880 (9.7)0.9259
Headache, n (%)1054 (11.2)20 (10.2)1034 (11.4)0.6697
Dyspnea, n (%)5446 (58.0)133 (66.2)5313 (58.1)0.0260
Diarrhea, n (%)2275 (24.2)42 (21.1)2233 (24.5)0.3112
Nausea, n (%)1125 (12.0)26 (13.1)1099 (12.1)0.7574
Vomiting, n (%)678 (7.2)11 (5.5)667 (7.3)0.4102
Abdominal pain, n (%)592 (6.3)13 (6.6)579 (6.4)0.9999
Confusion, n (%)1023 (10.9)24 (12.0)999 (11.0)0.7335
Tachypnea, n (%)2874 (30.6)84 (42.9)2790 (31.1)0.0005
SBP, mmHg (mean ± SD)128.5±20.1129±20.3129±21.10.9337
DBP, mmHg (mean ± SD)73.9±12.975±1374±12.90.2856
Heart rate, bpm (mean ± SD)88.4±17.492.5±18.188.4±17.30.0023
Temperature, °C (mean ± SD)37.05±0.9737.1±1.037.1±1.00.2218
Temperature ≥38° C, n (%)5996 (63.9)41 (20.6)1955 (21.4)0.2615
Crackles, n (%)4989 (53.2)108 (54.8)4881 (54.2)0.9201
Wheezing, n (%)549 (5.85)10 (5.1)539 (6.0)0.7023
Rhonchi, n (%)954 (10.2)21 (10.7)933 (10.4)0.9894
Basal O2 sat, % (mean ± SD)93.06±5.791.2±7.193.1±5.70.0003
Basal O2 sat <93%, n (%)3053 (32.5)89 (45.4)2964 (33.0)0.0003
qSOFA >2, n (%)799 (8.5)23 (11.3)776 (8.4)0.1764

SBP, systolic blood pressure; DBP, diastolic blood pressure; bpm, beats per minute; qSOFA, quick sequential organ failure assessment scale; SD, standard deviation

*Comparison of VTE vs. non-VTE groups

COVID-19-Related Clinical Variables of Included Patients SBP, systolic blood pressure; DBP, diastolic blood pressure; bpm, beats per minute; qSOFA, quick sequential organ failure assessment scale; SD, standard deviation *Comparison of VTE vs. non-VTE groups When analytical parameters were considered (Table 3), patients with VTE had a significantly higher pDd value at admission (median [IQR]: 1.4 [0.6–5.4] μg/ml vs 0.6 [0.3–1.2] μg/ml; p < 0.00001). VTE patients also had significantly higher neutrophil count in peripheral blood (median [IQR]: 5300 [3810-7600] cells × 106/L vs 4500 [3200-6560] cells × 106/L; p = 0.0008) and higher platelet counts (median [IQR]: 208 [158-289] cells × 109/L vs 190 [148-246] cells × 109/L; p = 0.0013), with no other significant differences.
Table 3

Blood Count and Coagulation Parameters of Included Patients

VariableAll patients (n = 9386)VTE group (n = 202)Non-VTE group (n = 9184)p*
Lymphocytes × 106/L (Med. [IQR])950 [750–1300]900 [620–1800]950 [700–1300]0.0594
Neutrophils × 106/L (Med. [IQR])4520 [3200–6600]5300 [3810–7600]4500 [3200–6560]0.0008
Platelets × 109/L (Med. [IQR])190 [148–246]208 [158–289]189 [148–245]0.0013
Prothrombin time (Med. [IQR])12.9 [11.9–14.2]12.7 [11.6–14]12.9 [11.9–14.2]0.0604
D-dimer, μg/ml (Med. [IQR])0.64 [0.36–1.2]1.41 [0.61–5.46]0.63 [0.36–1.17]<0.0001

Med., median; IQR, interquartile range

*Comparison of VTE vs. non-VTE groups

Blood Count and Coagulation Parameters of Included Patients Med., median; IQR, interquartile range *Comparison of VTE vs. non-VTE groups

Admission Plasma D-dimer Cut-off Value and Incidence of VTE

Different pDd cut-off values were analyzed for their sensitivity, specificity, PPV, and NPV for the diagnosis of VTE. For the maximum accuracy area, a cut-off value of 1.1 μg/ml showed a specificity of 72%, sensitivity of 49%, PPV of 4%, and NPV of 99%. This value had an area under the ROC curve of 0.7 (95% CI: 0.66–0.74) (Fig. 2). Otherwise, iterating through the different specificity values (Table 4), a specificity of 95% was obtained with a cut-off value of 4.7 μg/ml, with a sensitivity of 27%, PPV of 9%, and NPV of 98%.
Figure 2

ROC curve of at admission pDd values (μg/ml) and incidence of VTE during hospitalization.

Table 4

Plasma D-dimer Values Initially Analyzed for Cut-off and Their Sensitivity, Specificity, and Predictive Values for the Diagnosis of VTE

Plasma D-dimer Value (μg/ml)SensitivitySpecificityNPVPPV
0.790.690.600.990.04
1.030.590.700.990.04
1.440.500.800.980.05
2.450.390.900.980.08
4.690.270.950.980.11

NPV, negative predictive value; PPV, positive predictive value

ROC curve of at admission pDd values (μg/ml) and incidence of VTE during hospitalization. Plasma D-dimer Values Initially Analyzed for Cut-off and Their Sensitivity, Specificity, and Predictive Values for the Diagnosis of VTE NPV, negative predictive value; PPV, positive predictive value

Admission Plasma D-dimer Value, Overall Mortality, and Anticoagulation Intensity

Table 5 shows the analysis of different anticoagulation intensity regimens with different doses of LMWH and other anticoagulant drugs along with overall mortality stratified by pDd in all the cohort patients. Overall mortality was present in 17.6% of all the cases. In the absence of anticoagulation, mortality was found to increase as pDd values increased, with an overall mortality of 19.2%, and percentages ranging from 42.3 to 54.1% for pDd values higher than 1.0 μg/mL and 5.0 μg/mL, respectively. A proportional relationship between increasing mortality and increasing pDd values was also found in patients in all anticoagulation intensity groups. In each pDd level, mortality was affected by the intensity of the anticoagulant strategy. As showed in Table 5, the lowest mortality was found in patients with pDd >1.0 μg/mL treated with prophylactic doses of LMWH (26.3%; p < 0.0001 for the absent, low, intermediate, and full anticoagulation comparison), those with pDd >2.0 μg/ml treated with intermediate LMWH doses (28.8%; p = 0.0001), and those with pDd >3.0 μg/ml treated with full anticoagulation with LMWH or other drugs (31.3%; p = 0.0183).
Table 5

Overall Mortality for Each Category of at Admission pDd Range and Intensity of the Applied Anticoagulation During Hospitalization in All the Studied Population

pDd (μg/mL)No anticoagulationAnticoagulation intensityp*
LowIntermediateFull
All values234 (19.2%)961 (14.6%)123 (20.9%)355 (28.6%)<0.0001
> 1.0143 (42.3%)476 (26.3%)67 (27.8%)166 (35.0%)<0.0001
> 2.071 (51.0%)243 (32.6%)36 (28.8%)79 (33.7%)0.0001
> 3.042 (50.6%)155 (33.2%)27 (34.2%)61 (31.3%)0.0183
> 4.036 (52.1%)110 (32.5%)24 (35.2%)44 (31.2%)0.0131
> 5.026 (54.1%)80 (33.8%)21 (42.0%)32 (28.5%)0.0127

For each pDd category overall mortality is expressed as the absolute number of deaths (n) and percentage referred to all the patients in the considered pDd range (%). The lowest mortality group for each range of pDd is marked in grey

pDd, plasmatic D-dimer value

*Comparison among the four anticoagulation intensity groups

Overall Mortality for Each Category of at Admission pDd Range and Intensity of the Applied Anticoagulation During Hospitalization in All the Studied Population For each pDd category overall mortality is expressed as the absolute number of deaths (n) and percentage referred to all the patients in the considered pDd range (%). The lowest mortality group for each range of pDd is marked in grey pDd, plasmatic D-dimer value *Comparison among the four anticoagulation intensity groups

DISCUSSION

In our work, the overall prevalence of VTE was 2.2%, lower than previously described,[4-10,12-15] even for patients admitted to conventional hospital wards without active radiological screening for VTE.[5,6,8,12,15] In non-critical hospitalized patients, the reported rates are 3.3% and 6.6%,[5,12] lower than those in studies on patients in the ICU, with a prevalence between 16.7 and 28%.[5,6,8,12,15] In studies in which asymptomatic patients were screened for DVT, the proportion ranges from 14.7% in a conventional ward,[10] 46.1% in a study with ICU and non-ICU patients,[13] and 69% in ICU patients.[4] In a non-ICU group that underwent a computed tomography pulmonary angiogram, 23% had PE.[7] These rates are higher than those previously reported in non-COVID-19 patients, with a global prevalence of about 16% in conventional wards and 4.8 to 31.0% in ICUs.[18-20] The huge differences in reported prevalence are secondary to the different considered scenarios (ICU vs non-ICU patients) and the use of active radiological screening. The classical risk factors for VTE are common in COVID-19 patients. However, these factors do not seem to fully explain the higher frequency of thrombotic complications observed. According to this observation, in the present study, no significant differences were found in the prevalence of these classical prothrombotic factors when comparing patients with and without VTE. On the other hand, SARS-CoV-2 itself is able to induce a prothrombotic state related to an inflammatory reaction,[27-29] as has been demonstrated in autopsy studies, with frequent local pulmonary microthrombosis and endotheliitis[30-33] and evidences about complement activation.[34] Related to these observations, in a recent prospective observational study on 26 COVID-19 hospitalized patients who developed PE, DVT was only detected in 7.7% (95% CI: 3.6–11.7%) of the cases after systematic screening with compression ultrasound.[9] This points to the possibility that local lung inflammation and pulmonary microthrombosis are especially prominent in COVID-19.[11] Similar findings have been observed in our study, with a higher proportion of patients with PE alone (1.4%) than DVT alone (0.4%) or in combination (0.2%). These data suggest that the use of tests specifically for detecting DVT is not sufficient for detecting VTE in COVID-19. PE and SARS-CoV-2 pneumonia have similar clinical manifestations, making the diagnosis of VTE challenging in this scenario. In the general population, pDd has a high sensitivity for VTE and a very high NPV, with a cut-off value of 0.5 μg/ml or age-adjusted[22] for ruling out a VTE diagnosis in the case of low or intermediate pre-test probability.[21] Given that patients with COVID-19 usually have high pDd values because of the infection itself, a lesser specificity can be expected, so it is necessary to search for a higher cut-off value. Different proposals of higher cut-off values have been published. In a prospective study on 156 non-ICU hospitalized COVID-19 patients, Demelo-Rodríguez et al.[10] found that 14.7% of patients had DVT after the systematic screening with Doppler ultrasound, and they proposed a ROC curve cut-off value of 1.5 μg/ml for diagnosis. In an observational study with 106 patients, Leonard-Lorant et al.[16] found that 30% had PE after a computerized tomography pulmonary angiogram, and established that a pDd value >2.7 μg/ml detected all the cases. Cui et al.[17] included 81 patients with SARS-CoV-2-associated pneumonia and ICU admission and reported an incidence of DVT of 25%. Using random pDd values to establish the best cut-off value without a ROC analysis, they proposed a pDd cut-off of 1.5 μg/mL for the diagnosis of PE, with an estimated specificity, sensitivity, and NPV of 88.5%, 85.0%, and 94.7% respectively. In our patients, we found that a cut-off value of 1.1 μg/mL had a specificity of 72%, sensitivity of 49%, PPV of 4%, and NPV of 99% with the maximum ROC curve accuracy area. Alternatively, a cut-off value of 4.7 μg/mL had 95%, 27%, 11%, and 98% respectively, improving the specificity and consequently the PPV while maintaining a very high NPV. These higher cut-offs may be helpful for screening and ruling out VTE in patients with low and intermediate pre-test probability, while in patients with higher pDd, a radiological test, such as a Doppler ultrasound or a multidetector computed tomography pulmonary angiogram, should be performed, to confirm the diagnosis of DVT or PE. Because the range of pDd values found in our study was quite broad, we attempted to determine a value with potential clinical significance. To do so, we performed a stratified analysis, correlating at admission pDd value range and mortality, finding higher mortality with higher pDd values. We also found that initial anticoagulation intensity modified overall in-hospital mortality with the higher benefit with the higher dose in patients in the higher pDd range. For patients with pDd >3.0 μg/mL, the group which received full anticoagulation had lower mortality than groups which received less intensive anticoagulation. It should also be underscored that patients with pDd levels between 2.0 and 3.0 μg/mL had better outcomes with intermediate doses of LMWH and those with pDd <2.0 μg/mL had lower mortality with prophylactic doses of LMWH. Of note, prophylactic anticoagulation was related to a lower overall mortality rate in all patients and across all pDd values, with an overall mortality of 19.2% in patients without anticoagulation and 14.6% in those with LMWH at prophylactic doses, as seen in a previous study.[35] Most experts recommend prophylactic LMWH for all COVID-19 patients.[36] However, full anticoagulation is usually not recommended because of a lack of evidence on the clinical benefits and the potential risk of complications.[28,37,38] Despite the current uncertainty,[39] our findings about the use of different anticoagulation intensities according to pDd are in accordance with Maatman et al.,[40] who reported that the use of prophylactic doses of LMWH failed to prevent VTE in 26.6% of patients in the ICU, and that a pDd value >3.0 μg/mL was a predictor of this failure. In this line, a recent study on VTE diagnosis by ultrasound in COVID-19 patients admitted to the ICU[14] recommends ultrasound evaluation when pDd >2.0 μg/mL (sensitivity 95%, specificity 46%) and full empiric anticoagulation to be considered when pDd >5.5 μg/mL (sensitivity 53%, specificity 88%). Compared to this proposal, in our study, a pDd threshold of 3.0 μg/mL showed higher specificity (about 90%) and slightly less sensitivity (about 40%). Unfortunately, bleeding events or bleeding-related deaths were not captured in the Registry, although the stratified analysis suggests that this strategy is beneficial as overall mortality is reduced. Nevertheless, there is a lack of unanimity among different guidelines, especially in terms of determining anticoagulation intensity[36] and the finding in our study is merely exploratory. Among limitations of the present study, it has to be considered those related with the kind of study, an observational, retrospective one in which data were collected by a large team of different researchers, which could have led to heterogeneity in data entry and validation mainly because of the declarative character of the registry. Consequently, the diagnostic criteria have not been uniform. Moreover, since data has been obtained from a multicenter registry in which the incidence of VTE has been declarative according to each investigator criteria, some asymptomatic VTE patients may have erroneously been included in the non-VTE group. This last point could explain the low prevalence of thrombotic events in our cohort falsely decreasing the pre-test probability. Therefore, the PPV tends to be low and the NPV tends to be high, regardless of sensitivity and specificity. It has also to be considered that the specific causes of death were not registered, so analysis by confounding factors could not be done in the analysis of mortality and anticoagulation intensity stratified by pDd levels. It has also to be recognized as a limitation of the study that, although the suggested benefit on overall mortality depending on each admission pDd value category and the anticoagulation intensity, hemorrhagic events were not registered, and their analysis could have helped to estimate the net benefit of the suggested anticoagulation strategies. When considering the strengths of the study, it has to be underscored that, to date, it has the largest number of participants in real-world clinical practice and spans the entire geographical area of the same healthcare system, and the conclusions have been drawn from daily clinical activity and suggestions can be used in a real-world setting. In conclusion, to improve the specificity of pDd as a predictor of VTE in COVID-19 patients, cut-off values >1 μg/ml pDd should be used. Our data also suggest that pDd >3 μg/ml improves specificity and PPV while maintaining a high NPV in this population. These thresholds can be useful for the screening of VTE in COVID-19 patients and can also be used as a help for the clinician to determine if radiological confirmation is necessary, and probably to initiate full-dose anticoagulation. Finally, our results suggest that prophylactic LMWH should be applied to all hospitalized patients with COVID-19, and also that pDd values could help to decide the anticoagulation intensity to be used at admission in hospitalized patients with COVID-19. As the evidence has been obtained from a retrospective observational study, the suggestions made based on this work should be further studied in randomized prospective studies, though given the current lack of evidence, the results of this study can be considered helpful in daily clinical practice. (DOCX 52 kb) (DOC 83 kb)
  33 in total

1.  Case-Fatality Rate and Characteristics of Patients Dying in Relation to COVID-19 in Italy.

Authors:  Graziano Onder; Giovanni Rezza; Silvio Brusaferro
Journal:  JAMA       Date:  2020-05-12       Impact factor: 56.272

2.  Pulmonary Embolism in Patients With COVID-19: Awareness of an Increased Prevalence.

Authors:  Julien Poissy; Julien Goutay; Morgan Caplan; Erika Parmentier; Thibault Duburcq; Fanny Lassalle; Emmanuelle Jeanpierre; Antoine Rauch; Julien Labreuche; Sophie Susen
Journal:  Circulation       Date:  2020-04-24       Impact factor: 29.690

3.  Risk Factors Associated With Acute Respiratory Distress Syndrome and Death in Patients With Coronavirus Disease 2019 Pneumonia in Wuhan, China.

Authors:  Chaomin Wu; Xiaoyan Chen; Yanping Cai; Jia'an Xia; Xing Zhou; Sha Xu; Hanping Huang; Li Zhang; Xia Zhou; Chunling Du; Yuye Zhang; Juan Song; Sijiao Wang; Yencheng Chao; Zeyong Yang; Jie Xu; Xin Zhou; Dechang Chen; Weining Xiong; Lei Xu; Feng Zhou; Jinjun Jiang; Chunxue Bai; Junhua Zheng; Yuanlin Song
Journal:  JAMA Intern Med       Date:  2020-07-01       Impact factor: 21.873

4.  Acute Pulmonary Embolism Associated with COVID-19 Pneumonia Detected with Pulmonary CT Angiography.

Authors:  Franck Grillet; Julien Behr; Paul Calame; Sébastien Aubry; Eric Delabrousse
Journal:  Radiology       Date:  2020-04-23       Impact factor: 11.105

5.  High incidence of venous thromboembolic events in anticoagulated severe COVID-19 patients.

Authors:  Jean-François Llitjos; Maxime Leclerc; Camille Chochois; Jean-Michel Monsallier; Michel Ramakers; Malika Auvray; Karim Merouani
Journal:  J Thromb Haemost       Date:  2020-05-27       Impact factor: 5.824

6.  [Pulmonary embolism and COVID-19: A paradigm change].

Authors:  A Franco-Moreno; N Muñoz-Rivas; B Mestre-Gómez; J Torres-Macho
Journal:  Rev Clin Esp       Date:  2020-05-21       Impact factor: 1.556

7.  Incidence of venous thromboembolism in hospitalized patients with COVID-19.

Authors:  Saskia Middeldorp; Michiel Coppens; Thijs F van Haaps; Merijn Foppen; Alexander P Vlaar; Marcella C A Müller; Catherine C S Bouman; Ludo F M Beenen; Ruud S Kootte; Jarom Heijmans; Loek P Smits; Peter I Bonta; Nick van Es
Journal:  J Thromb Haemost       Date:  2020-07-27       Impact factor: 5.824

8.  Incidence of asymptomatic deep vein thrombosis in patients with COVID-19 pneumonia and elevated D-dimer levels.

Authors:  P Demelo-Rodríguez; E Cervilla-Muñoz; L Ordieres-Ortega; A Parra-Virto; M Toledano-Macías; N Toledo-Samaniego; A García-García; I García-Fernández-Bravo; Z Ji; J de-Miguel-Diez; L A Álvarez-Sala-Walther; J Del-Toro-Cervera; F Galeano-Valle
Journal:  Thromb Res       Date:  2020-05-13       Impact factor: 3.944

9.  Incidence of thrombotic complications in critically ill ICU patients with COVID-19.

Authors:  F A Klok; M J H A Kruip; N J M van der Meer; M S Arbous; D A M P J Gommers; K M Kant; F H J Kaptein; J van Paassen; M A M Stals; M V Huisman; H Endeman
Journal:  Thromb Res       Date:  2020-04-10       Impact factor: 3.944

10.  Clinical course and risk factors for mortality of adult inpatients with COVID-19 in Wuhan, China: a retrospective cohort study.

Authors:  Fei Zhou; Ting Yu; Ronghui Du; Guohui Fan; Ying Liu; Zhibo Liu; Jie Xiang; Yeming Wang; Bin Song; Xiaoying Gu; Lulu Guan; Yuan Wei; Hui Li; Xudong Wu; Jiuyang Xu; Shengjin Tu; Yi Zhang; Hua Chen; Bin Cao
Journal:  Lancet       Date:  2020-03-11       Impact factor: 79.321

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  5 in total

Review 1.  Role of Acute Thrombosis in Coronavirus Disease 2019.

Authors:  Derek V Gibbs; Satya S Shreenivas; Kristin M Hudock
Journal:  Crit Care Clin       Date:  2022-03-25       Impact factor: 3.879

2.  PICO Questions and DELPHI Methodology for the Management of Venous Thromboembolism Associated with COVID-19.

Authors:  Antoni Riera-Mestre; Luis Jara-Palomares; Ramón Lecumberri; Javier Trujillo-Santos; Enric Grau; Angeles Blanco-Molina; Ana Piera Carbonell; Sonia Jiménez; Manuel Frías Vargas; Mari Paz Fuset; Sergi Bellmunt-Montoya; Manuel Monreal; David Jiménez
Journal:  Viruses       Date:  2021-10-22       Impact factor: 5.048

Review 3.  [Utility of probability scores for the diagnosis of pulmonary embolism in patients with SARS-CoV-2 infection: a systematic review].

Authors:  Ana Isabel Franco-Moreno; Ana Bustamante-Fermosel; José Manuel Ruiz-Giardin; Nuria Muñoz-Rivas; Juan Torres-Macho; David Brown-Lavalle
Journal:  Rev Clin Esp       Date:  2022-08-05       Impact factor: 3.064

4.  Full Characterization of Thrombotic Events in All Hospitalized COVID-19 Patients in a Spanish Tertiary Hospital during the First 18 Months of the Pandemic.

Authors:  Álvaro Tamayo-Velasco; Carolina Bombín-Canal; María José Cebeira; Laura Sánchez-De Prada; José Pablo Miramontes-González; Marta Martín-Fernández; María Jesús Peñarrubia-Ponce
Journal:  J Clin Med       Date:  2022-06-15       Impact factor: 4.964

Review 5.  Utility of probability scores for the diagnosis of pulmonary embolism in patients with SARS-CoV-2 infection: A systematic review.

Authors:  A I Franco-Moreno; A Bustamante-Fermosel; J M Ruiz-Giardin; N Muñoz-Rivas; J Torres-Macho; D Brown-Lavalle
Journal:  Rev Clin Esp (Barc)       Date:  2022-09-22
  5 in total

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