Methods: A total of 1,871 lower extremities of 1,218 treatment-naïve patients (536 males, 682 females; mean age 45.4 years; range, 21 to 87 years) with chronic venous disease referred for Doppler examination between September 2009 and August 2018 were included. Refluxing superficial venous segments of the lower extremities were mapped and recorded in database in 10 distinct anatomic locations as follows: saphenofemoral junction and proximal greater saphenous vein, mid and distal thigh greater saphenous vein, anterior and posterior accessory saphenous veins, proximal and distal calf greater saphenous vein, saphenopopliteal junction and proximal lesser saphenous vein, distal lesser saphenous vein, and intersaphenous veins including Giacomini"s vein. Repeated examinations were excluded. The latent class analysis was applied to identify any possible anatomic distribution patterns of chronic venous disease.
Results: Bayesian information criteria revealed three latent class models fit for refluxing segment distribution as follows: 58.2% (n=1,089) were above-the-knee greater saphenous vein segments including saphenofemoral junction (pattern 1); 29.3% (n=548) were below-theknee greater saphenous vein segments (pattern 2); and 12.5% (n=234) were lesser saphenous vein segments and intersaphenous veins including Giacomini"s vein (pattern 3). There was no age- or sex-specific differences in the chronic venous disease distribution patterns.
Conclusion: The latent class analysis, by identifying previously unseen subgroups within the sampled population, provides a new approach to classification of reflux patterns in chronic venous disease. Identification of latent classes may provide understanding of different pathophysiological bases of venous reflux and more optimal planning for interventions.
In the present study, we aimed to identify latent classes of CVD with specific distribution patterns, which may hint at similar etiology or progression characteristics, from within a large group of patients with primary insufficiency of lower limb superficial veins, utilizing the LCA based on whether a given venous segment is refluxing in a particular patient.
Imaging and data collection
Doppler mapping of CVD distribution was
performed by a single radiologist experienced in venous
imaging. An ultrasonography unit (Logiq S8, General
Electrics, Fairfield, CT, USA) with a 12 to 16 MHz
linear transducer was used. As the standard practice,
the whole thigh and leg regions were mapped, while
the patients were standing upright; a wide field of view
(FOV) and a frame rate of 30 frames/sec was employed.
Venous insufficiency was defined as the presence
of flow reversal lasting more than 0.5 sec during
provocation maneuvers (Figure 1). Refluxing segments
were recorded in database as 10 distinct anatomic
locations in accordance with modern phlebology
nomenclature (Table 1).[11] Concomitant variables were
the age and sex of the patient. Distribution of age and
sex within subclasses of CVD were evaluated using
variance analysis.
Table 1: Designation of 10 refluxing superficial venous segments in Doppler mapping
LCA software
The LCA was applied to reveal any possible
anatomic distribution patterns of venous insufficiency.
It was performed using open source and public domain
statistics programs R Studio (v1.1.463, R Foundation
for Statistical Computing, Boston, MA, USA) software with poLCA (Polytomous Variable Latent Class
Analysis, v1.4.1, Civiqs, Oakland, CA, USA) statistical
package.
Input data, criterion variables, and LCA
parameters
The input data of LCA are joint distribution of signs
and symptoms and physiological markers, also called
criterion variables, which in our example are whether
a particular segment is affected determined by venous
mapping. With 10 dichotomous criterion variables, the
input data are the relative proportions of occurrence
of each of 210 =1,024 distinct combinations of items.
Parameters to be estimated were as follows: prevalence
of each latent class (unconditional probabilities; i.e.,
prevalence of each reflux distribution pattern emerging
from analysis) and distribution of criterion variables
within each latent class (conditional probabilities,
independent of each other within each group, i.e.,
distribution of whether a particular segment is refluxing
or not in each pattern emerging from analysis). These
parameters were, then, combined mathematically into
a likelihood function, and the set which maximized the likelihood function determined the membership of
each individual in one of the latent classes.[8,10]
Model selection for latent classes
A challenge of LCA is that before we estimated
our LCA model we had to choose how many groups
we needed to have. The aim was to identify a plausible
classification structure for CVD distribution patterns
with the smallest number of classes so that the model
was still adequate for the data, but also parsimonious.
In this study, the number of latent classes, i.e., distinct
patterns of segmental involvement, was defined
according to the Bayesian information criterion (BIC)
which compares multiple models - e.g., one with two
groups, another with three groups, another with four
groups - against each other.[12-14]
Table 2: Bayesian information criteria indicating a three-latent class model fit
Refluxing segment distribution was observed in these three latent classes (Figure 2). The most common pattern (58.2%; n=1,089) included above-the-knee GSV segments including the saphenofemoral junction (SFJ) and anterior/posterior accessory saphenous veins. The second most common pattern of CVD (29.3%; n=548) included below-the-knee GSV segments. The least common pattern (12.5%; n=234) had clustering of CVD of LSV segments and intersaphenous veins including Giacomini"s vein (Figure 3). There was no age- or sex-related differences within the CVD segmental distribution patterns (Table 3).
Figure 2: Schematic representations of superficial venous reflux distribution patterns 1, 2, and 3.
Table 3: Variance of age and sex distribution among latent classes
Of three subclasses, the most common pattern (58.2%) was above-the-knee GSV segments including SFJ (n=728) and accessory saphenous veins. This is consistent with a previous large-scale, cross-sectional study which reported 53% involvement of the SFJ in 2,019 limbs.[15] The least common pattern of reflux (12.5%) comprised insufficient LSV segments and intersaphenous veins including Giacomini"s vein. This prevalence is similar to that stated in a published series reporting 11.6% involvement in 2,036 limbs.[2] Of particular importance is that LCA revealed that intersaphenous venous insufficiency had a tendency to cluster with CVD of LSV, but not with that of GSV. This finding is consistent with a previous study, although not proved, indicating a similar pattern by estimating odds ratio for presence of Giacomini's vein reflux in cases with LSV insufficiency to be nearly twice as that of cases with refluxing GSV (odds ratio of 12 and 6.6, respectively).[16] The second most common pattern (29.3%) consisted of below-the-knee GSV segments. This is seemingly different from previous studies which report reflux of below-the-knee GSV as high as 68%.[4] In our study population, the number of limbs with refluxing calf segments of GSV is, indeed, 852 (45.5% of all limbs). This is due to the fact that LCA estimates latent class models for analysis of multivariate categorical data and manifest variables may contain any number of polytomous outcomes. Hence, the number of patients with positive results for each one of 10 categorical variables, i.e., total number of individuals with reflux of a given venous segment, is greater than the number of members of the latent class, encompassing the particular venous segment. In other words, a patient allocated to patterns 1 or 3 may also have below-the-knee GSV involvement, since LCA is a likelihood estimation, but not, per se, a tally count.[10]
There are two seemingly conflicting models on progression of CVD over time. Retrograde progression theory is centered on case series with proximal segmental involvement, such as SFJ and proximal thigh GSV reflux, becoming more diffuse in a descending fashion. Antegrade progression, on the other hand, is based on observation of predominantly distal to proximal, and also segmental to more diffuse, evolution of CVD in cohorts.[5] The LCA of our study population classified patients into two separate homogenous subgroups with below-the-knee and above-the-knee involvement and this may imply that both ascending and descending progressions are distinct and plausible processes.
In the current study, the patterns of involvement in CVD did not reveal significant sex-based differences. This is consistent with the current literature stating that CVD is not particularly a female disease.[17] Another finding is that patients assigned into three subclasses did not have statistically significant age differences. In the current literature, it has been reported that CVD shows progression with a rate of 4.3% per year.[3] It is also possible to assess changes in latent classes over time by utilizing an extension of LCA called latent transition analysis.[18] This exploratory LCA study, on the other hand, is unable to construct such progression patterns, since it is solely based on single cross-sectional observations, but not on cohorts.
The lower limb superficial venous system commonly exhibits variations due to segmental or complete aplasia, hypoplasia, and duplications of saphenous veins. Anterior and posterior accessory veins, circumflex veins, hypertrophic venous tributaries, and intersaphenous and cranial extensions of saphenous veins contribute to adequate venous drainage in variant anatomy. Identification of such variations is necessary for correct diagnosis and treatment; however, the effect of having a variant anatomy (compared to having a "normal" one, which may be much less frequent than expected) on pathophysiology of venous reflux has not been well established, yet.[19-21] Due to the design of this particular study, i.e., selection of criterion variables, we cannot predict the exact effect of venous variations on the pathophysiology or distribution of venous insufficiency.
Nonetheless, the LCA findings are to be construed in the context of certain limitations. First, as in any multivariate classification algorithm, the LCA assumes that manifest variables - i.e., refluxing venous segments - have no association after controlling for latent variables. This assumption of local independence may not be always true due to the nature of variables entered into the analysis. Second, the LCA solution is critically dependent on input dataset - i.e., maps of refluxing segments of each patient. Thus, patterns obtained with LCA may contrast with our results, when employed in a different population. Since patterns of involvement and relevant prevalence are from a specific study population, any inferences obtained from this particular analysis may have limited generalizability of the results. In addition, with a study population originating from an outpatient vascular interventions clinic, it is likely that sample composition was influenced by potential sampling biases. Finally, LCA, by its very definition, classifies patients, but not refluxing segments, into unseen subgroups. This precludes proving the existence of an underlying class system and imposing that these classes upon input data may obscure a simpler spectrum of involvement.[10,12,18,22,23]
In conclusion, the latent class analysis, by identifying previously unseen subgroups within the sampled population, provides a new approach to classification of reflux patterns in chronic venous disease. Identification of latent classes may provide understanding of different pathophysiological basis of venous reflux and more optimal planning for interventions.
Declaration of conflicting interests
The authors declared no conflicts of interest with respect to
the authorship and/or publication of this article.
Funding
The authors received no financial support for the research
and/or authorship of this article.
1) Wittens C, Davies AH, Bækgaard N, Broholm R, Cavezzi
A, Chastanet S, et al. Editor's Choice - Management of
Chronic Venous Disease: Clinical Practice Guidelines of the
European Society for Vascular Surgery (ESVS). Eur J Vasc
Endovasc Surg 2015;49:678-737.
2) García-Gimeno M, Rodríguez-Camarero S, Tagarro-Villalba
S, Ramalle-Gomara E, González-González E, Arranz MA, et
al. Duplex mapping of 2036 primary varicose veins. J Vasc
Surg 2009;49:681-9.
3) Lee AJ, Robertson LA, Boghossian SM, Allan PL, Ruckley
CV, Fowkes FG, et al. Progression of varicose veins and
chronic venous insufficiency in the general population in the
Edinburgh Vein Study. J Vasc Surg Venous Lymphat Disord
2015;3:18-26.
4) Labropoulos N, Giannoukas AD, Delis K, Mansour MA,
Kang SS, Nicolaides AN, et al. Where does venous reflux
start? J Vasc Surg 1997;26:736-42.
5) Bernardini E, De Rango P, Piccioli R, Bisacci C, Pagliuca
V, Genovese G, et al. Development of primary superficial
venous insufficiency: the ascending theory. Observational
and hemodynamic data from a 9-year experience. Ann Vasc
Surg 2010;24:709-20.
6) Cooper DG, Hillman-Cooper CS, Barker SG, Hollingsworth
SJ. Primary varicose veins: the sapheno-femoral junction,
distribution of varicosities and patterns of incompetence. Eur
J Vasc Endovasc Surg 2003;25:53-9.
7) Engelhorn CA, Manetti R, Baviera MM, Bombonato GM,
Lonardoni M, Cassou MF, et al. Progression of reflux
patterns in saphenous veins of women with chronic venous
valvular insufficiency. Phlebology 2012;27:25-32.
8) Linzer DA, Lewis JB. poLCA: An R Package for Polytomous
Variable Latent Class Analysis. Journal of Statistical
Software 2011;42:1-29.
9) Rindskopf D, Rindskopf W. The value of latent class analysis
in medical diagnosis. Stat Med 1986;5:21-7.
10) Vermunt JK, Magidson J. Latent class cluster analysis. In:
Hagenaars JA, McCutcheon AL, editors. Applied latent class
analysis. New York: Cambridge University Press; 2002.
p. 89-106.
11) Kachlik D, Pechacek V, Baca V, Musil V. The superficial
venous system of the lower extremity: new nomenclature.
Phlebology 2010;25:113-23.
12) Lanza ST, Rhoades BL. Latent class analysis: an alternative
perspective on subgroup analysis in prevention and treatment.
Prev Sci 2013;14:157-68.
13) Forster MR. Key Concepts in Model Selection: Performance
and Generalizability. J Math Psychol 2000;44:205-31.
14) van den Bergh M, van Kollenburg GH, Vermunt JK.
Deciding on the Starting Number of Classes of a Latent Class
Tree. Sociol Methodol 2018;48:303-36.
15) Zollmann P, Zollmann C, Zollmann P, Veltman J, Kerzig
D, Doerler M, et al. Determining the origin of superficial
venous reflux in the groin with duplex ultrasound and
implications for varicose vein surgery. J Vasc Surg Venous
Lymphat Disord 2017;5:82-6.
16) Delis KT, Knaggs AL, Khodabakhsh P. Prevalence, anatomic
patterns, valvular competence, and clinical significance of
the Giacomini vein. J Vasc Surg 2004;40:1174-83.
17) Wrona M, Jöckel KH, Pannier F, Bock E, Hoffmann B, Rabe
E. Association of Venous Disorders with Leg Symptoms:
Results from the Bonn Vein Study 1. Eur J Vasc Endovasc
Surg 2015;50:360-7.
18) Lanza ST, Collins LM. A new SAS procedure for latent
transition analysis: transitions in dating and sexual risk
behavior. Dev Psychol 2008;44:446-56.
19) Oğuzkurt L. Ultrasonographic anatomy of the lower extremity
superficial veins. Diagn Interv Radiol 2012;18:423-30.
20) Cavezzi A, Labropoulos N, Partsch H, Ricci S, Caggiati A,
Myers K, et al. Duplex ultrasound investigation of the veins
in chronic venous disease of the lower limbs--UIP consensus
document. Part II. Anatomy. Eur J Vasc Endovasc Surg
2006;31:288-99.
21) Oguzkurt L. Ultrasonography study on the segmental aplasia
of the great saphenous vein. Phlebology 2014;29:447-53.