Free Testosterone & cardiometabolic parameters in men - comparison of algorithms

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Free testosterone and cardiometabolic parameters in men - comparison of algorithms

Stine A Holmboe; Ravi Jasuja; Brian Lawney; Lærke Priskorn; Niels Joergensen; Allan Linneberg; Tina Kold Jensen; Niels Erik Skakkebæk Anders Juul and Anna-Maria Andersson




Abstract

Objective.
Calculating the free testosterone level has gained increasing interest and different indirect algorithms have been suggested. The objective was to compare free androgen index (FAI), free testosterone estimated using the linear binding model (Vermeulen: cFTV), and the binding framework accounting for allosterically coupled SHBG monomers (Zakharov: cFTZ) in relation to cardiometabolic conditions.

Design. A prospective cohort study including 5,350 men, aged 30-70 years, participating in population-based surveys (MONICA I–III and Inter99) from 1982-2001 and followed until December 2012 with baseline and follow-up information on cardiometabolic parameters and vital status.

Results. Using age-standardized hormone levels, FAI was higher among men with baseline cardiometabolic conditions, whereas cFTV and cFTZ levels were lower compared to men without these conditions as also seen for total testosterone. Men in the highest quartiles of cFTV or cFTZ had a lower risk of developing type 2 diabetes (cFTV: HR=0.74 (0.49-1.10), cFTZ: HR=0.59 (0.39-0.91)) than men in the lowest quartile. In contrast, men with the highest levels of FAI had a 74% (1.17-2.59) increased risk of developing type 2 diabetes compared to men in the lowest quartile.

Conclusion. The association of estimated free testosterone and the studied outcomes differ depending on the algorithm used. cFTV and cFTZ showed similar associations to baseline and long-term cardiometabolic parameters. In contrast, an empiric ratio, FAI, showed opposite associations to several of the examined parameters and may reflect limited clinical utility.




Introduction

Testosterone in serum is primarily bound to proteins with only a minor fraction circulating as free unbound testosterone. The major high-affinity binding protein is sex hormone-binding globulin (SHBG) (1). Because of the short half-life of unbound testosterone in serum and the hypothalamic adjustment of testosterone, changes in SHBG levels will strongly influence the level of total testosterone.

According to the free hormone hypothesis, the free testosterone and the fraction of testosterone loosely bound to albumin are considered the fractions that are bioavailable for the target tissues
(2).
The testosterone level is affected by health status and different lifestyle factors and in general, there is an agreement between the free and total levels of testosterone regarding the direction and magnitude of the observed effects (3, 4). However, some studies including both total and free testosterone have indicated that free testosterone rather than total testosterone (TT) is associated with androgen deficiency-related symptoms (5, 6). Consequently, determining the free or bioavailable testosterone level has gained increasing interest over the years (7). Equilibrium dialysis is considered the gold standard method for measuring free testosterone but is a time-consuming method mostly used for research purposes and not widely available (1, 8). Therefore, alternative indirect equations for the estimation of free testosterone have been developed.

Free androgen index (FAI) is probably the simplest of these equations as it is calculated as the ratio between TT and SHBG (TT*100/SHBG). As indicated by the name, FAI is not an estimate of the free testosterone concentration but simply an index of the balance between serum testosterone andSHBG
. While it is recognized that FAI is not based on any biophysical characterization, it continues to be used by investigators (9, 10). Several algorithms based on law-of-mass-action equations requiring information on the level of TT and SHBG have been developed with varying degrees of correlation with equilibrium dialysis and some have been suggested as reasonable alternatives to direct measurements (1). One of the most commonly used indirect algorithms, which have been acknowledged by the Endocrine Society because of its clinical relevance in relation to hypogonadism, was suggested by Vermeulen et al. (1, 11, 12). The algorithm by Vermeulen is constructed using a linear model of binding where monomers within the SHBG dimer were assumed to have an identical affinity (11). This model predates the resolution of the crystal structure of dimeric SHBG (13). Subsequently, several detailed biophysical studies have found the SHBG binding with testosterone to be a non-linear, multiphasic process (14). More recently, Zakharov et al. demonstrated that SHBG monomers within the dimer are allosterically coupled. Allostery in the multimeric, heteromeric, or multidomain proteins allows for fine-tuned binding and release dynamics of ligands in diverse systems spanning oxygen transport by hemoglobin to transcription factors signaling. Since testosterone concentrations change several orders of magnitude during development, puberty, pregnancy, and aging, it is conceivable that the SHBG dimer was designed to act as a non-linear logarithmic sensor (15). If the two monomers were identical in the dimer, as is assumed by the simplified linear model, there will be no evolutionary benefit for the dimeric structure of SHBG. Detailed biophysical characterization of SHBG/testosterone interaction led to the development of a multistep, non-linear binding model upon the ensemble allostery framework (16), which also has been validated against equilibrium dialysis (17)

Other studies have attempted to compare free testosterone levels measured directly by equilibrium dialysis with indirect estimations of free testosterone (11, 17, 18). However, the predictive value of the different free testosterone estimations in relation to androgen deficiency parameters was not investigated and remains unknown. Numerous studies have shown that lower levels of TT and SHBG are associated with risk factors for cardiovascular diseases such as obesity and hyperglycemia although the causal mechanism behind this is unclear, reviewed in (19). Also, a lower level of free testosterone estimated by Vermeulen et al. has been associated with risk factors for cardiovascular disease (19). However, free testosterone calculated using different algorithms, and the association to cardiometabolic parameters have not been compared before.

Thus, the aim in the following was twofold; first, we examined the baseline association between the different free testosterone algorithms and cardiometabolic conditions, and secondly, the aim was to describe the predictive value of the different algorithms of free testosterone in relation to the long-term development of type 2 diabetes, cardiovascular disease, and mortality.
To elucidate this, a cohort consisting of more than 5,000 adult men from the general population with hormone levels available as well as information on baseline and follow-up information on cardiometabolic parameters was used.




Material and Methods

Study population T


The study comprised serum samples from 5,350 randomly selected Danish men participating in four cross-sectional surveys at Research Centre for Prevention and Health at Glostrup University Hospital as described previously (20). The four surveys MONICA I, MONICA II, MONICA III, and INTER99 were conducted in 1982, 1987, 1992, and between 1999 and 2001, respectively (21, 22). All participants from the four surveys were drawn as random samples of 30-, 40-, 50-, 60-, and 70-year-old men from the Danish Civil Registration System in which all Danish inhabitants are registered. The participation rates in the four surveys were 81%, 75%, 69%, and 51%, respectively.

All participants went through a physical examination and filled out a detailed questionnaire on lifestyle factors and health status and had a blood sample drawn while fasting (23). Serum samples were analyzed for lipids and stored in aliquots at -18°C until further analyses. The study was approved by the Ethical Committee of the County of Copenhagen and all participants had provided informed consent.





Statistical methods

Mean, standard deviations (sd), and relative standard deviations (sample sd σ/sample mean µ*100) were calculated for each of the three free testosterone variables. Initially, cFTV and cFTZ levels were visually compared by use of scatter plot and Bland-Altman plot illustrating mean free testosterone levels in relation to the ratio between the two calculated variables. To allow direct comparison of the algorithms (independent of the differences in absolute values) age-standardized z-scores were calculated as previously described (20). Differences in mean absolute hormone levels as well as mean z-score levels of FAI, cFTV, cFTZ, TT and SHBG were stratified according to baseline lifestyle and health-related characteristics and tested using general linear regression models.




Results

In general, levels of free T determined using the linear model systematically underestimated those determined using the ensemble allostery model (mean (sd) cFTZ = 647.1 (253.8) pmol/L and cFTV = 434.5 (163.8) pmol/L). The mean level of FAI, which is not directly comparable to the two other algorithms, was 67.9 (28.3). The relative standard deviations of the three calculated variables were 39%, 37%, and 41% for cFTZ, cFTV, and FAI respectively, indicating relatively similar dispersion of the frequency distribution.

There was an apparent correlation between cFTV and cFTZ (r=0.9, p<0.01) although the agreement decreased with higher mean free testosterone level (Figure 1A and 1B) and the values from the two methods could not be interconverted by a simple scalar multiple. Stratification according to quartiles of TT indicated that higher levels of TT contributed to the difference between the two free testosterone algorithms.

Table 1 shows mean absolute hormone levels as well as age-standardized hormone levels stratified according to baseline characteristics. When stratifying according to BMI, higher BMI was associated with lower absolute levels of all hormones. In accordance, age-standardized hormone levels were lower with higher BMI except for age-standardized levels of FAI which were higher with higher BMI.Likewise, men with waist circumference > 94 cm had lower age-standardized free testosterone levels according to Vermeulen and Zakharov but higher age-standardized FAI levels compared to men with waist circumference < 94cm (cFTV = -0.20, cFTZ = -0.33, and FAI = 0.12, respectively).
Similarly, when stratifying according to other cardiometabolic parameters such as hypertension, elevated triglyceride level and the presence of metabolic syndrome, age-standardized levels of FAI were highest among men with these conditions compared to men without such conditions whereas age-standardized levels of cFTV and cFTZ were lowest among men with the conditions. In general, trends for cFTV and cFTZ pointed in the same direction but with more pronounced estimates for the Zakharov algorithm. Men with diabetes at baseline were characterized by significantly lower levels of age-standardized free testosterone irrespective of algorithm (FAI = -0.48, p<0.01; cFTV = -0.59, p<0.01; cFTZ = -0.49, p<0.01).

In Cox regression analyses, quartiles of age-standardized free testosterone levels were analyzed in relation to survival outcomes (Figure 2 A-D, Supplementary Tables 1-2). Cox regression analyses revealed that higher age-standardized levels of cFTV and cFTZ were associated with a lower risk of subsequent type 2 diabetes in accordance with the trend seen for TT, however only significant for cFTZ and TT (p<0.01). In contrast, a significant positive association between age-standardized FAI and the risk of type 2 diabetes was seen. Thus, men in the highest quartile had a 74% increased risk of developing type 2 diabetes compared to men in the lowest quartile (HR=1.74, 95% CI:1.17-2.59). In analyses with IHD as the outcome, the three algorithms pointed in the same direction, in line with the trends seen for TT, with higher levels associated with a higher risk of IHD with the most pronounced effect seen for highest quartiles of FAI (FAI, HR=1.37, 95% CI=1.10-1.70; cFTV, HR=1.25, 95% CI=0.99-1.57: cFTZ, HR=1.22, 95% CI=0.97-1.53). Also, in analyses with CVD mortality as the outcome of the three algorithms followed the same trend.
Thus, a lower CVD mortality risk was seen for men with age-standardized free testosterone levels in the third and fourth quartile with the most pronounced effects seen for cFTZ. In contrast, the three algorithms differed in relation to all-cause mortality analyses; no association was seen for differences in total testosterone and free testosterone estimated using the Zakharov algorithm, whereas a trend towards lower mortality risk with higher levels of FAI and cFTV were seen.




Discussion

In a cohort of more than 5,000 adult men, we observed that absolute levels of free testosterone differed according to which algorithm was applied; levels estimated using the Zakharov algorithm were in general higher compared to levels using the Vermeulen algorithm. Despite differences in absolute levels, free testosterone estimated by Vermeulen and Zakharov correlated and showed similar associations to lifestyle and cardiovascular parameters. In contrast, FAI showed opposite associations to several of the examined lifestyle and cardiovascular parameters.

A limited number of studies have investigated the differences in calculations of free testosterone especially with the inclusion of the algorithm suggested by Zakharov. In accordance with others, we observed that absolute levels of free testosterone estimated by Zakharov et al. tended to be higher compared to free testosterone estimated by Vermeulen et al (17, 18).
Because FAI is calculated as an index a direct comparison between absolute levels of FAI and the two calculated algorithms is not relevant.

To our knowledge, free testosterone calculated using different algorithms, and the association to cardiometabolic parameters have not been compared before
. Interestingly, in the present study, we found that men characterized by cardiometabolic conditions such as high BMI, increased waist circumference, hypertension, and elevated glucose levels had lower age-standardized levels of free testosterone estimated using both Vermeulen and Zakharov compared to men without these conditions. For cFTV and cFTZ the trends pointed in the same direction irrespective of absolute values or age-standardized values being used. A consistent pattern for cFTV and cFTZ was also seen in relation to long-term outcomes such as type 2 diabetes and CVD mortality with higher levels of free testosterone, irrespective of the algorithm, being associated with a lower risk of the two outcomes.

On the contrary, for FAI a less consistent pattern was seen in relation to cardiometabolic conditions. Only minor differences in FAI levels were seen with different levels of BMI indicating a consistent ratio between TT and SHBG across BMI groups. Moreover, for several of the lifestyle parameters, the trends in age-standardized values of FAI were significantly different from absolute values indicating that age-correction has a major influence on FAI
. In relation to long-term outcomes, less clear patterns were seen for FAI; similar associations to IHD, CVD, and all-cause mortality as for cFTV and cFTZ were seen. However, for type 2 diabetes higher levels of FAI were associated with a higher risk of type 2 diabetes whereas higher levels of free testosterone estimated by Vermeulen and Zakharov were associated with a lower risk of type 2 diabetes. While FAI is not based on any biophysical characterization, it is still frequently used but our study provides further support that such empiric assessment does not correlate with clinical assessments or provide any mechanistic insight.

In a study by Ho et al. free testosterone was calculated according to four different algorithms including the algorithm suggested by Vermeulen et al., and subsequently compared to FAI. Interestingly, the authors found that FAI tended to overestimate the free testosterone level at lower levels of SHBG irrespective of which equation was used indicating that FAI is a less reliable index of free testosterone (28).

In the present study, we observed lower age-standardized levels of TT and SHBG among men with cardiometabolic characteristics compared to men without such conditions in accordance with a number of other studies (19). Thus, the lowered SHBG level in cardiometabolic men could explain the deviating trends seen for FAI compared to the two other algorithms. In line with this, our findings of higher risk of type 2 diabetes with a higher quartile of FAI and a tendency of lower risk of type 2 diabetes with higher quartiles of free testosterone estimated using Vermeulen or Zakharov could be explained as secondary to an observed lower risk of type 2 diabetes with a higher quartile of SHBG as previously published (27).

In general, it can be debated whether free testosterone alone reflects the biologically relevant fraction of testosterone in accordance with the free hormone hypothesis (2). However, based on data from the European Male Aging Study an association between men with both low total and free testosterone and impaired sexual function like erectile dysfunction and infrequent morning erections was seen whereas no association was seen for men with only low TT and free testosterone within the reference range (29). The importance of free testosterone was furthermore underlined in a case of a 27-year-old man with undetectable SHBG levels due to a mutation in the SHBG gene (30). The man had low TT level but free testosterone levels within the reference range and was characterized by normal gonadal development and spermatogenesis suggesting a limited role of SHBG and a high TT level. However, the man presented a 7- year history of muscle weakness, fatigue, and decreased libido indicating potential androgen deficiency despite normal virilization and normal free testosterone. In relation to the cardiometabolic outcomes included in this study, an agreement was seen between associations observed for TT and free testosterone calculated according to Zakharov et al. and Vermeulen et al. indicating that both the total and free fraction of testosterone are equally good indicators in relation to these outcomes in men from the general population.

However, to determine the biological relevance of total and free testosterone it would be relevant to include more androgen-specific endpoints.

Despite the differences in absolute levels, the algorithms suggested by Vermeulen et al. and Zakharov et al. were in general in agreement in relation to the survival outcomes (Figure 2). However, the algorithm by Zakharov et al. tended to be in closer agreement with the associations seen for total testosterone indicating that the algorithm is more dependent on the levels of total testosterone compared to the algorithm by Vermeulen et al. However, with findings from recent studies on crystal structure and multisite binding of testosterone with albumin (31, 32), it is conceivable that simplified assumptions in extant models should be examined in detail. It is unclear why the algorithm by Vermeulen et al. was largely independent of both the levels of SHBG, albumin and total testosterone level in contrast to the algorithm by Zakharov.

*In the present study, free testosterone was calculated in men from the general population with only a minor proportion of the men being characterized by extreme hormone levels. The agreement between the algorithms may differ in a clinical setting with patients exhibiting extreme values of binding proteins and/or total testosterone levels where a more comprehensive model incorporating dynamic repartitioning of testosterone between SHBG and albumin-bound fractions may be superior.

Our findings are based on a random sample of men from the general population with a high participation rate. Thus, we believe that our findings are generalizable to similar Caucasian populations in the same age range.
Overall, the findings of the present study indicate that free testosterone is a biological marker of different cardiometabolic endpoints. However, different algorithms of free testosterone are differently associated with these endpoints indicating that the algorithms contribute with different information but also limits any general conclusions. In future studies, endpoints that are more directly related to androgen action would be relevant to include in relation to the different algorithms to further elucidate the differences between algorithms.

Alternatively, measurements of the bioactive androgen level using an androgen bioassay could improve the knowledge of biologically relevant free testosterone levels (35)

In conclusion, our findings suggest that free testosterone estimated by Vermeulen and Zakharov are more sensitive markers of morbidity compared to FAI despite systematic differences in absolute levels. Consequently, because of the significant differences in absolute levels of free testosterone, specific reference ranges for each method should be provided. It remains however to be elucidated whether free testosterone alone can explain the effects of androgen action.
 

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*The algorithm by Vermeulen is constructed using a linear model of binding where monomers within the SHBG dimer were assumed to have an identical affinity (11). This model predates the resolution of the crystal structure of dimeric SHBG (13). Subsequently, several detailed biophysical studies have found the SHBG binding with testosterone to be a non-linear, multiphasic process (14). More recently, Zakharov et al. demonstrated that SHBG monomers within the dimer are allosterically coupled. Allostery in the multimeric, heteromeric, or multidomain proteins allows for fine-tuned binding and release dynamics of ligands in diverse systems spanning oxygen transport by hemoglobin to transcription factors signaling.

*Since testosterone concentrations change several orders of magnitude during development, puberty, pregnancy, and aging, it is conceivable that the SHBG dimer was designed to act as a non-linear logarithmic sensor (15). If the two monomers were identical in the dimer, as is assumed by the simplified linear model, there will be no evolutionary benefit for the dimeric structure of SHBG. Detailed biophysical characterization of SHBG/testosterone interaction led to the development of a multistep, non-linear binding model upon the ensemble allostery framework (16), which also has been validated against equilibrium dialysis (17).


*In general, levels of free T determined using the linear model systematically underestimated those determined using the ensemble allostery model (mean (sd) cFTZ = 647.1 (253.8) pmol/L and cFTV = 434.5 (163.8) pmol/L). The mean level of FAI, which is not directly comparable to the two other algorithms, was 67.9 (28.3). The relative standard deviations of the three calculated variables were 39%, 37%, and 41% for cFTZ, cFTV, and FAI respectively, indicating relatively similar dispersion of the frequency distribution.

*There was an apparent correlation between cFTV and cFTZ (r=0.9, p<0.01) although the agreement decreased with higher mean free testosterone level (Figure 1A and 1B) and the values from the two methods could not be interconverted by a simple scalar multiple. Stratification according to quartiles of TT indicated that higher levels of TT contributed to the difference between the two free testosterone algorithms.


*Despite the differences in absolute levels, the algorithms suggested by Vermeulen et al. and Zakharov et al. were in general in agreement in relation to the survival outcomes (Figure 2). However, the algorithm by Zakharov et al. tended to be in closer agreement with the associations seen for total testosterone indicating that the algorithm is more dependent on the levels of total testosterone compared to the algorithm by Vermeulen et al. However, with findings from recent studies on crystal structure and multisite binding of testosterone with albumin (31, 32), it is conceivable that simplified assumptions in extant models should be examined in detail. It is unclear why the algorithm by Vermeulen et al. was largely independent of both the levels of SHBG, albumin and total testosterone level in contrast to the algorithm by Zakharov.

*In the present study, free testosterone was calculated in men from the general population with only a minor proportion of the men being characterized by extreme hormone levels. The agreement between the algorithms may differ in a clinical setting with patients exhibiting extreme values of binding proteins and/or total testosterone levels where a more comprehensive model incorporating dynamic repartitioning of testosterone between SHBG and albumin-bound fractions may be superior.
 
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Table 1. Age-standardized z-scores and absolute mean hormone values stratified according to baseline characteristics (n=5,350)
Screenshot (3420).png

Screenshot (3421).png

Screenshot (3422).png

Screenshot (3424).png

Screenshot (3425).png

Screenshot (3426).png
 
Figure 1A. Free testosterone according to Vermeulen equation plotted against the level according to Zakharov equation (Pearson coefficient r=0.9, p<0.01). The line represents the identity line. Figure 1B. Bland-Altman plot of the ratio between free testosterone calculated by Zakharov and Vermeulen equation according to mean levels of free testosterone calculated by the two equations. 176x80mm (600 x 600 DPI)
Screenshot (3427).png
 
Hazard ratios and 95% confidence intervals for quartiles of free testosterone stratified according to algorithm (FAI, Vermeulen, or Zakharov) in relation to type 2 diabetes, ischemic heart disease, cardiovascular disease mortality and all-cause mortality. All models are stratified according to smoking status and adjusted for study, BMI, alcohol consumption, and physical exercise with age as the underlying time scale. 252x181mm (600 x 600 DPI)
Screenshot (3428).png

Screenshot (3429).png
 
*In addition to baseline levels of metabolic parameters, our follow-up study made it possible to also investigate long-term cardiovascular outcomes. Some limitations should however be considered when interpreting the results. The aim of the study was to compare different algorithms of free testosterone in relation to metabolic parameters. It would, however, have been relevant also to include direct measurements of free testosterone using equilibrium dialysis to directly compare the different algorithms to the gold standard method. Due to lack of serum, this was however not a possibility. Furthermore, no information on symptoms of androgen insufficiency was available. Thus, a comparison of the three free testosterone algorithms in relation to androgen activity was not possible. Likewise, information on other measures of biological activity of testosterone, such as PSA levels or hematocrit levels, were not available. Information on LH, the primary stimulator of testosterone was however available but the calculated ratio between LH and the algorithms by Vermeulen et al. and Zakharov et al did not reveal any differences in relation to the included survival outcomes (data not shown). Another limitation in the study is the lack of measurements of albumin levels which is included for calculation of free testosterone, because of limitations of available serum volume. However, as relatively large changes in albumin is needed to significantly affect the calculated free testosterone level we used a fixed average level of albumin in both the algorithm by Vermeulen et al. and Zakharov et al. Both testosterone and SHBG were measured using immunoassays. Measurements of sex steroids by use of immunoassays have been criticized for being less reliable compared to methods based on liquid or gas chromatography-tandem mass spectrometry, which today are recommended for analyses of small molecules like steroid hormones (1, 33). The main problem of immunoassays relates to their tendency of overestimating concentrations in the lower range but this issue is less significant in higher measurement ranges (1, 34). Thus, this is not a major concern in this study based on adult men from the general population.
 
This will happen soon enough!


*It would, however, have been relevant also to include direct measurements of free testosterone using equilibrium dialysis to directly compare the different algorithms to the gold standard method. Due to lack of serum, this was however not a possibility.
 
The work perhaps supports the notion that Vermeulen and Tru-T are comparable and have utility as long as one avoids extremes in testosterone and SHBG.
 
*In the present study, free testosterone was calculated in men from the general population with only a minor proportion of the men being characterized by extreme hormone levels. The agreement between the algorithms may differ in a clinical setting with patients exhibiting extreme values of binding proteins and/or total testosterone levels where a more comprehensive model incorporating dynamic repartitioning of testosterone between SHBG and albumin-bound fractions may be superior.
 
.*In general, levels of free T determined using the linear model systematically underestimated those determined using the ensemble allostery model (mean (sd) cFTZ = 647.1 (253.8) pmol/L and cFTV = 434.5 (163.8) pmol/L).

*There was an apparent correlation between cFTV and cFTZ (r=0.9, p<0.01) although the agreement decreased with higher mean free testosterone level (Figure 1A and 1B) and the values from the two methods could not be interconverted by a simple scalar multiple. Stratification according to quartiles of TT indicated that higher levels of TT contributed to the difference between the two free testosterone algorithms.


*Despite the differences in absolute levels, the algorithms suggested by Vermeulen et al. and Zakharov et al. were in general in agreement in relation to the survival outcomes (Figure 2). However, the algorithm by Zakharov et al. tended to be in closer agreement with the associations seen for total testosterone indicating that the algorithm is more dependent on the levels of total testosterone compared to the algorithm by Vermeulen et al. However, with findings from recent studies on crystal structure and multisite binding of testosterone with albumin (31, 32), it is conceivable that simplified assumptions in extant models should be examined in detail. It is unclear why the algorithm by Vermeulen et al. was largely independent of both the levels of SHBG, albumin, and total testosterone level in contrast to the algorithm by Zakharov.



*We have previously observed similar allosteric coupling between the monomers of dimeric SHBG upon testosterone binding (49). The overly simplified linear models with 1:1 stoichiometry have overlooked the complexities in the dynamics of the binding of testosterone to HSA and SHBG.





*The first structure of SA in complex with a steroid sex hormone indicates that testosterone does not bind in the previously suggested first Sudlow site but rather in two sites known to bind fatty acids and drugs.
 
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More to come.

Patiently waiting on the completion of Phase II for the TruT (cFTZ) Algorithm


R44G045011 (JASUJA, RAVI)
NIH/NIA
Phase II: Research and Commercialization of TruT Algorithm
Role: Principal Investigator

Sep 15, 2017 - May 31, 2021
Screenshot (3430).png
 
- in phase I studies, we demonstrated that TruTTM algorithm provides accurate free T values that match those obtained using the equilibrium dialysis in healthy and hypogonadal men

- we have also shown that the binding parameters that have formed the basis of previous equations (e.g., Vermeulen) are incorrect and that free T values derived using these equations deviate substantially from free T measured by equilibrium dialysis

- the phase I studies have led to the adoption of the TruTTM algorithm at several institutions

- the phase II program will continue the development of the TruTTM algorithm by validating it in common conditions characterized by altered SHBG concentration, such as obesity and aging (AIM 1), in healthy women across the menstrual cycle, and in women with PCOS (AIM 2)

- we will generate population-based reference ranges for free T (AIM 3)

- phase II also includes plans for commercialization of the TruTTM algorithm using a HIPAA compliant infrastructure for its clinical adoption

-the phase II program will provide validation of TruTTM algorithm in the two most common clinical indications for free T measurement? men suspected of hypogonadism and altered SHBG levels, and women with hyperandrogenic disorders

- it will also enable the development of a HIPAA compliant platform that can be embedded into the electronic medical record for wider clinical adoption and for improving clinical care




Project Start 2014-09-15
Project End 2019-05-31 (2021-05-31)



Phase II: Research and Commercialization of TruT Algorithm for Free Testosterone
 
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Key points:


EAM (cFTZ) SHBG: T binding

*
Intra-dimer complex allostery suggests that SHBG can regulate FT fraction over a wide range of total testosterone concentrations without getting saturated.

*Indeed, it was found that percent FT calculated using the new model changed very modestly over a wide range of total testosterone concentrations.


*Due to the allostery between the two binding sites, SHBG is able to regulate FT levels in a much larger dynamic range.
 
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