Fact-checked by Grok 2 weeks ago

Homeostatic model assessment

The homeostatic model assessment (HOMA) is a mathematical method developed to quantify insulin resistance and beta-cell function using measurements of fasting plasma glucose and insulin (or C-peptide) concentrations, providing a non-invasive estimate of glucose homeostasis in humans. Introduced in 1985, HOMA simulates the steady-state interaction between glucose and insulin through a physiological model, allowing researchers to derive indices such as HOMA-IR for insulin resistance and HOMA-%B for beta-cell secretory capacity from a single blood sample. The original HOMA1 model employs simple linear equations, where insulin resistance (HOMA-IR) is calculated as (fasting insulin × fasting glucose) / 22.5 and beta-cell function (HOMA-%B) as (20 × fasting insulin) / (fasting glucose - 3.5), with glucose in mmol/L and insulin in μU/mL; these formulas approximate the feedback loop maintaining euglycemia in healthy individuals. An updated version, HOMA2, published in 1998, uses a computer-based nonlinear algorithm to account for variations in modern insulin assays and glucose ranges, improving accuracy across a wider spectrum of glucose tolerance from normal to type 2 diabetes. Validation studies have shown strong correlations between HOMA-IR and the gold-standard euglycemic-hyperinsulinemic clamp technique (Spearman's rank correlation coefficient of 0.88) and between HOMA-%B and the hyperglycemic clamp (correlation of 0.69), confirming its utility despite not replacing direct measures for individual diagnostics. HOMA has been widely adopted in epidemiological research, appearing in over 500 publications by 2004, primarily for assessing in nondiabetic populations and tracking progression in large cohorts like the UK Prospective Study (UKPDS). Its advantages include simplicity, low cost, and applicability to population-level studies, enabling cross-cultural comparisons and longitudinal monitoring without the invasiveness of clamp techniques. However, limitations persist: HOMA is less precise for individual patient assessment due to higher variability with single samples (coefficients of variation of approximately 8–12% with modern assays), performs poorly in advanced or insulin-treated subjects where steady-state assumptions fail, and is not validated for use in animals or isolated beta-cell evaluation. Ongoing refinements, including HOMA2 software available from the Oxford Centre for Diabetes, Endocrinology and Metabolism, continue to enhance its role in clinical and research settings focused on metabolic disorders.

Overview

Definition

The homeostatic model assessment (HOMA) is a mathematical method used in to estimate and beta-cell function based on plasma glucose and insulin concentrations. Developed as a tool to quantify the contributions of these physiological factors to hyperglycemia, HOMA relies on a that derives indices from a single basal blood sample, making it a practical to more invasive procedures. At its core, HOMA models the steady-state interaction between glucose and insulin in the state, capturing the feedback loop where insulin secretion from pancreatic beta-cells regulates hepatic glucose output and peripheral . This approach assumes a balance in the basal condition, allowing the model to predict deviations caused by impaired beta-cell responsiveness or reduced insulin in target tissues. Unlike dynamic tests such as the euglycemic or hyperglycemic , which involve controlled infusions and time-series measurements to assess real-time responses, HOMA focuses exclusively on steady-state conditions to provide a snapshot of without external perturbations. This distinction enables its widespread use in large-scale studies while highlighting its limitations in capturing postprandial dynamics.

Purpose and Components

The Homeostatic Model Assessment (HOMA) serves primarily to quantify through the HOMA-IR index, aiding in the identification of metabolic disorders such as , and to estimate beta-cell function via the HOMA-B index, which evaluates the pancreatic secretory capacity to maintain euglycemia. Developed as a practical tool for clinical and research settings, HOMA enables the assessment of these physiological parameters without the need for complex interventions, facilitating early detection and monitoring of glucose disruptions. Conceptually, HOMA-IR provides a surrogate measure of hepatic insulin , reflecting how effectively insulin suppresses endogenous glucose production in the state; elevated values indicate reduced and increased , often preceding overt . In contrast, HOMA-B expresses beta-cell function as a relative to a normal reference population, capturing the pancreas's ability to secrete insulin in response to prevailing glucose levels under steady-state conditions. These components together model the dynamic interplay in the glucose-insulin , offering insights into the underlying of and beta-cell dysfunction. A key advantage of HOMA lies in its non-invasive nature, relying solely on measurements from a single blood sample of glucose and insulin (or ), which avoids the procedural burdens and costs associated with gold-standard techniques like the hyperinsulinemic-euglycemic clamp. This simplicity makes HOMA particularly suitable for large-scale epidemiological studies, population screening, and routine clinical evaluations where accessibility is paramount.

Mathematical Formulation

Original HOMA Equations

The original Homeostasis Model Assessment (HOMA), introduced in , provides simple mathematical approximations to estimate and beta-cell function from glucose and insulin concentrations, assuming a steady-state in the state. These approximations derive from a computer-based model of glucose-insulin interactions but were simplified for clinical use without requiring computational software. The index for , denoted as HOMA-IR (or equivalently, the reciprocal of HOMA-%S for insulin sensitivity), is calculated as: \text{HOMA-IR} = \frac{\text{fasting glucose (mmol/L)} \times \text{fasting insulin (\mu U/mL)}}{22.5} Here, the constant 22.5 represents the typical product of fasting glucose and insulin in a normal-weight, non-diabetic under steady-state conditions, derived from empirical dose-response data and model calibration to yield a value of 1 in healthy individuals. The index for beta-cell function, HOMA-%B (expressed as a percentage of normal), is given by: \text{HOMA-%B} = \frac{20 \times \text{fasting insulin (\mu U/mL)}}{\text{fasting glucose (mmol/L)} - 3.5} The constant 20 approximates the basal insulin secretion rate (around 10 mU/min per m^2 body surface area, doubled for percentage scaling), while 3.5 mmol/L is the modeled glucose threshold below which beta-cell secretion is negligible, based on physiological fasting homeostasis in healthy subjects. These equations rely on a linear feedback assumption between glucose and insulin in the fasting state, simplifying the underlying nonlinear physiological dynamics for practical estimation, though this linearity holds best within normal ranges and may deviate in extreme hyperglycemia or hypoglycemia. For laboratories using glucose in mg/dL, equivalent formulas adjust the constants via unit conversion (1 mmol/L ≈ 18 mg/dL): HOMA-IR = [fasting glucose (mg/dL) × fasting insulin (μU/mL)] / 405, and HOMA-%B = [360 × fasting insulin (μU/mL)] / [fasting glucose (mg/dL) - 63], preserving the original model's intent and calibration.

HOMA2 Model

The HOMA2 model, introduced in by Levy et al., represents an updated nonlinear computer-based approach to estimating β-cell function and insulin sensitivity from fasting plasma glucose and insulin or concentrations. Unlike the original linear approximation, HOMA2 employs an iterative algorithm that simulates the physiological feedback loop between the liver, peripheral tissues, and , incorporating factors such as renal glucose loss to extend applicability to hyperglycemic states. This model was specifically recalibrated to align with modern insulin assays, including radioimmunoassays () for total insulin and specific assays that exclude proinsulin and its conversion intermediates, enabling more precise assessments in contemporary clinical settings. Key enhancements in HOMA2 include improved accuracy over a broader range of physiological values, with acceptable steady-state inputs for plasma glucose from 3.0 to 25 mmol/L and insulin from 20 to 400 pmol/L (approximately 2.9 to 57.6 μU/mL). These extensions surpass the limitations of the original model, which was constrained to normoglycemic ranges, allowing reliable estimates in individuals with impaired glucose tolerance or . The primary outputs are %B ( β-cell function relative to a normal young adult reference of 100%), %S ( insulin sensitivity, also normalized to 100%), and HOMA-IR (an index derived as 100 / %S). These metrics provide a steady-state comparable to gold-standard dynamic tests like the euglycemic clamp, though without requiring invasive procedures. Practical implementation of HOMA2 is facilitated through freely available software developed by the Diabetes Trials Unit at the , including an online calculator accessible via their website and downloadable Excel spreadsheets for batch processing of data. The Excel tool computes %B, %S, and HOMA-IR directly from user-input values, supporting both insulin and as inputs after appropriate unit conversions. For -based estimates, the software incorporates -specific conversion factors—such as 1 nmol/L equating to approximately 3 ng/mL—to ensure compatibility with standard laboratory measurements, though users are advised to verify local calibrations to avoid discrepancies from sample degradation or method variations.

Development and Validation

Historical Background

The homeostatic model assessment (HOMA) was first described in 1985 by David R. Matthews and colleagues in a seminal paper published in Diabetologia, where they introduced a to estimate and beta-cell function using fasting plasma glucose and insulin concentrations. This model was derived from physiological data collected in studies conducted during the early , primarily at the , drawing on experimental observations of glucose-insulin in humans with varying degrees of glucose tolerance. The development of HOMA was motivated by the need for a straightforward, non-invasive surrogate measure to assess and beta-cell function, particularly in large-scale epidemiological and on , where gold-standard techniques like the euglycemic-hyperinsulinemic were impractical due to their complexity, time requirements, and resource intensity. Over the subsequent decades, the model evolved to address limitations of the original formulation, which relied on linearized approximations that performed poorly at higher glucose levels and did not account for advancements in insulin technologies. In 2004, Timothy M. Wallace, Jonathan C. Levy, and David R. Matthews updated the approach with HOMA2, a nonlinear computer-solved version that improved accuracy across a wider range of glucose concentrations and incorporated adjustments for contemporary laboratory methods. The original HOMA framework was also integrated into broader modeling approaches, such as HOMA-CIGMA, which combines assessments with from controlled glucose infusions to evaluate both basal and stimulated states of glucose-insulin dynamics, as outlined in contemporaneous work by the same research group.

Derivation and Assumptions

The (HOMA) derives from a physiological feedback loop model that conceptualizes glucose-insulin as the product of hepatic glucose and insulin-mediated suppression of glucose output, balanced against beta-cell responsiveness to glucose . This framework integrates from physiological studies on dose-response relationships, where elevated glucose drives insulin from pancreatic beta-cells, and circulating insulin in turn regulates hepatic glucose efflux and peripheral uptake to maintain steady-state levels. The model simplifies these interactions into a structural calibrated to normal physiological conditions, enabling estimates of and beta-cell function from single measurements. Key assumptions underpin this derivation, including the existence of steady-state conditions after an overnight fast (typically 8-12 hours), during which glucose and insulin concentrations remain stable with negligible influences from recent nutrient absorption or postprandial hormonal effects. The model further presumes normal renal function, as kidneys contribute significantly to insulin clearance, and any could elevate insulin independently of . In its original form, HOMA also assumes linear relationships between glucose, insulin concentrations, and their downstream effects on glucose disposal, facilitating straightforward approximations without complex nonlinear computations. Validation efforts demonstrated the model's fidelity by correlating HOMA-estimated with direct measures from the euglycemic-hyperinsulinemic clamp technique (r = 0.88, p < 0.0001) in both normal and diabetic subjects. Reference values for normalization were derived from population-based data in healthy individuals, setting benchmarks such as 100% beta-cell function and unit insulin resistance under ideal fasting homeostasis. Despite these strengths, the derivation's simplifications introduce limitations, notably by overlooking incretin hormones (e.g., GLP-1) that augment postprandial but also influence basal insulin secretion, and by not fully delineating peripheral insulin resistance from hepatic components, potentially underrepresenting tissue-specific dynamics.

Clinical Applications

Diagnostic Use

The Homeostatic Model Assessment of Insulin Resistance (HOMA-IR) can serve as a surrogate marker for insulin resistance, primarily in research settings, for individuals at risk of prediabetes, type 2 diabetes, and metabolic syndrome. By estimating hepatic insulin sensitivity from fasting glucose and insulin levels, it aids in identifying impaired glucose homeostasis in high-risk groups, such as those with obesity, family history of diabetes, or sedentary lifestyles. This approach supports targeted interventions to prevent progression to overt diabetes or cardiovascular complications associated with insulin resistance. In the context of polycystic ovary syndrome (PCOS), HOMA-IR is applied to assess insulin resistance, with thresholds such as 2.5 often used to indicate significant impairment that exacerbates hyperandrogenism and ovulatory dysfunction. Although not a core diagnostic criterion under Rotterdam guidelines, elevated HOMA-IR supports the stratification of PCOS patients for therapies like metformin to mitigate metabolic risks. HOMA-IR integrates into assessments for high-risk populations as a validated surrogate index. Standardization of insulin assays is recommended to improve measurement reliability. The procedure is straightforward, requiring an 8-12 hour fast followed by a single venous blood draw to measure fasting plasma glucose and insulin concentrations, making it accessible for outpatient use without the need for dynamic testing.

Research and Epidemiological Use

The Homeostatic Model Assessment (HOMA) has proven valuable in longitudinal cohort studies for tracking the progression of insulin resistance at a population level. For instance, analyses of data from the (NHANES) spanning 1999–2020 have utilized HOMA-IR to examine associations between insulin resistance markers and outcomes such as diabetes risk and atherogenic indices in over 19,000 participants, enabling the identification of long-term trends in metabolic health. Similarly, prospective cohort models developed using NHANES data have validated HOMA-based predictions of insulin resistance in non-diabetic populations, facilitating the monitoring of disease progression over time. In clinical trials for antidiabetic agents, HOMA-IR serves as a key endpoint to evaluate treatment efficacy on insulin sensitivity. Studies have shown that changes in HOMA-IR explain significant portions of treatment effects in interventions targeting glucose dysregulation, such as metformin therapy, where reductions in HOMA-IR correlate with improved insulin sensitivity and weight loss. Multicenter randomized controlled trials have incorporated HOMA-IR to assess the impact of novel antidiabetic drugs on insulin resistance, providing a quantifiable surrogate for metabolic improvements without requiring invasive procedures. Epidemiological research has leveraged HOMA-IR to uncover associations with cardiovascular disease (CVD) risk and mortality. A 2023 study demonstrated that elevated HOMA-IR levels are independently linked to increased risks of incident CVD, all-cause mortality, and CVD-specific mortality, highlighting its role in stratifying population-level cardiovascular hazards. Recent analyses, including those from 2024 cohorts, further indicate a U-shaped relationship between HOMA-IR and all-cause mortality in patients with coronary heart disease and hypertension, underscoring its utility in identifying both high and low extremes of insulin resistance as prognostic factors. HOMA's advantages in large-scale epidemiological studies stem from its cost-effectiveness and non-invasive nature, requiring only a single fasting blood sample for glucose and insulin measurements. This simplicity allows for its application across thousands of participants in population surveys, making it a practical alternative to gold-standard methods like the euglycemic clamp, which are resource-intensive and unsuitable for broad cohorts. As a result, HOMA-IR has become a preferred tool for screening and surveillance in studies of conditions like non-alcoholic fatty liver disease, where it supports efficient identification of insulin resistance patterns in diverse populations.

Interpretation and Limitations

Reference Values

Reference values for the Homeostatic Model Assessment (HOMA) provide benchmarks for interpreting (HOMA-IR) and beta-cell function (HOMA-%B), aiding in the identification of metabolic alterations in clinical and research settings. In healthy individuals, HOMA-IR is typically around 1.0, with values >2.0-2.5 commonly used to indicate , though exact thresholds vary by population, , and HOMA model (HOMA1 or HOMA2). Reference values are not universally standardized and depend on the HOMA model, , and population characteristics; the HOMA2 computer model is recommended for accurate and . In general populations, a HOMA-IR cutoff greater than 2.5 is widely used to diagnose , particularly in non-diabetic individuals, as it balances for detection. However, ethnicity influences these thresholds; South Asians often exhibit higher baseline HOMA-IR (e.g., mean ~2.3) due to genetic and environmental factors, necessitating ethnicity-specific reference ranges for accurate interpretation compared to populations (mean ~2.6). For HOMA-%B, which estimates beta-cell function as a of a reference population, the standard value is 100%, with a range of 70% to 150%; values below 70% signal beta-cell dysfunction, while those above 150% may indicate compensatory . HOMA values are modulated by demographic and anthropometric factors, including age, (BMI), and sex, necessitating context-specific interpretation. HOMA-IR tends to increase with advancing age and higher BMI, reflecting progressive declines in insulin sensitivity, and is often higher in females than males after adjusting for . Guidelines recommend considering these variables when evaluating results, such as stratifying by age groups or BMI categories to avoid misclassification. For serial monitoring of HOMA indices over time, a of more than 20% is considered indicative of a significant metabolic shift, such as progression toward or improvement from , allowing clinicians to track responses to interventions like lifestyle modifications. This threshold accounts for biological variability and measurement precision in repeated assessments.

Criticisms and Constraints

The Homeostatic Model Assessment (HOMA) exhibits significant constraints in its applicability across certain clinical scenarios. It is inaccurate for assessing beta-cell function in individuals with or those receiving exogenous insulin therapy, as the model relies on endogenous insulin production, which is absent or suppressed in these cases. Similarly, HOMA performs poorly in advanced beta-cell failure, where low beta-cell function undermines the validity of estimates, particularly in subjects with lower (BMI) and elevated fasting glucose levels. In non-fasting states, HOMA lacks validation, as its calculations assume steady-state basal conditions that do not hold postprandially, leading to unreliable results. Additionally, HOMA primarily reflects hepatic and tends to underestimate peripheral , limiting its utility in capturing whole-body dynamics. Criticisms of HOMA center on its over-reliance on assumptions, which overlook dynamic insulin-glucose responses and stimulated beta-cell function, contrasting with gold-standard methods that evaluate maximal capacity. This static approach can lead to misinterpretation, such as attributing low beta-cell output to failure rather than appropriate adaptation. variability further compromises reproducibility, with coefficients of variation (CV) for HOMA insulin (%S) ranging from 7.8% to 11.7% in modern assays, though triplicate sampling can reduce this to around 5.8%. A seminal 2004 review, "Use and Abuse of HOMA Modeling," highlighted widespread misuse, including application in non-steady-state conditions (e.g., after short-acting insulin) and reliance on outdated HOMA1 equations without recalibration software for HOMA2, which better accounts for contemporary assay characteristics. Recommendations emphasize that HOMA should not replace dynamic techniques like the euglycemic-hyperinsulinemic for precise individual assessments but is most suitable for estimating group means in studies. For optimal use, the HOMA2 computer model is advised over manual equations, with reporting of both insulin sensitivity and beta-cell function indices, and logarithmic transformation for non-normal data distributions.

Comparisons

Euglycemic-Hyperinsulinemic Clamp

The euglycemic-hyperinsulinemic clamp technique, developed by DeFronzo et al. in 1979, serves as the gold standard for directly quantifying insulin sensitivity and resistance . In this method, insulin is administered via a primed-continuous intravenous to rapidly achieve and sustain , typically at levels of approximately 100 μU/mL, which effectively suppresses endogenous hepatic glucose production. Concurrently, a variable-rate glucose is adjusted based on frequent glucose measurements to blood glucose at a euglycemic target (90-100 mg/dL), thereby isolating the effects of exogenous insulin on glucose metabolism without confounding . The primary metric derived from the is the M-value, representing the steady-state glucose rate (in mg/kg/min) required to maintain euglycemia after 120-150 minutes, which quantifies whole-body insulin-mediated glucose disposal. This approach has been instrumental in validating surrogate measures like the homeostatic model assessment of (HOMA-IR); for instance, the original HOMA study reported a Spearman of r_s = 0.88 between HOMA-IR and clamp-derived estimates, though HOMA explains only ~80% of the variance in clamp results. Compared to HOMA, the offers key advantages as a direct physiological assessment, enabling precise evaluation of insulin action on in peripheral tissues and suppression of hepatic output, with modifications using isotopic tracers (e.g., [3-³H]glucose) for tissue-specific insights into . Despite its precision, the technique poses significant practical challenges, including a duration of 2-3 hours to achieve steady-state conditions, the need for invasive vascular catheterization, continuous arterialized sampling every 5-10 minutes, and specialized expertise to titrate infusions accurately. These demands make it resource-intensive and unsuitable for large-scale or routine clinical use, confining it primarily to controlled research environments.

Other Surrogate Indices

The Quantitative Insulin Sensitivity Check Index (QUICKI) serves as an alternative surrogate measure of insulin sensitivity derived from glucose and insulin concentrations, calculated as a log-transformed to enhance linearity, particularly in individuals with where HOMA may lose precision. QUICKI demonstrates superior performance in such cases, offering a reliable estimate that correlates strongly with the euglycemic-hyperinsulinemic , the gold standard for insulin sensitivity, with reported correlation coefficients up to r=0.80. The McAuley Index provides another fasting-based surrogate for , incorporating fasting insulin and levels to account for influences, making it particularly suitable in contexts of where elevated s signal metabolic risk. This index simplifies assessment by avoiding glucose measurements, and studies validate its correlation with clamp-derived insulin sensitivity measures, though it performs best in non-diabetic populations without severe . In contrast to fasting-only methods like HOMA, the Matsuda Index utilizes data from the oral glucose tolerance test (OGTT), integrating both and post-challenge glucose and insulin levels to capture dynamic whole-body insulin sensitivity, thereby providing a more comprehensive reflection of postprandial responses. Originally validated against the euglycemic , it shows strong correlations (r ≈ 0.73–0.88) and is preferred in research settings requiring assessment of glucose disposal rates beyond basal states. Among these surrogates, HOMA remains favored for its simplicity and minimal data requirements in large-scale epidemiological studies, yet QUICKI offers advantages in hyperinsulinemic conditions (e.g., when insulin exceeds 300 μU/mL), while the McAuley Index excels in lipid-related evaluations and the Matsuda Index in dynamic testing scenarios, with all showing comparable validity to the in non-extreme metabolic states.

References

  1. [1]
    insulin resistance and beta-cell function from fasting plasma glucose ...
    Homeostasis model assessment: insulin resistance and beta-cell function from fasting plasma glucose and insulin concentrations in man. Diabetologia. 1985 Jul ...
  2. [2]
    insulin resistance and β-cell function from fasting plasma glucose ...
    May 31, 1985 · A computer-solved model has been used to predict the homeostatic concentrations which arise from varying degrees of β-cell deficiency and insulin resistance.
  3. [3]
    Use and Abuse of HOMA Modeling | Diabetes Care
    Jun 1, 2004 · HOMA is a method for assessing β-cell function and insulin resistance (IR) from basal (fasting) glucose and insulin or C-peptide concentrations.GENERAL USE OF THE... · INAPPROPRIATE USE OF... · STATISTICAL AND...
  4. [4]
  5. [5]
  6. [6]
  7. [7]
    Homeostasis Model Assessment - an overview | ScienceDirect Topics
    The HOMA-IR is defined as [fasting glucose (mmol/L) × fasting insulin (μmol/L)/22.5] or [fasting glucose (mg/dL) × fasting insulin (μmol/L)/405].Missing: original | Show results with:original
  8. [8]
    Frequently Asked Questions - Radcliffe Department of Medicine
    The HOMA2 Calculator is intended for use by health care professionals to assist in the assessment of beta cell function and insulin sensitivity.
  9. [9]
    Measurement of insulin resistance in chronic kidney disease - PMC
    The most commonly used methods are the homeostasis model assessment of insulin resistance (HOMA-IR) and the quantitative insulin sensitivity check index (QUICKI) ...
  10. [10]
    Surrogate markers of insulin resistance: A review - PMC
    ... HOMA model parallels equally with that of the euglycemic clamp method (r = 0.88)[51]. HOMA-IR has been observed to have a linear correlation with the glucose ...
  11. [11]
    Indicators of insulin resistance in clinical practice - Nature
    Jan 4, 2024 · Most large-scale studies have used HOMA-IR because it is obtained using a simple formula based only on fasting blood glucose and insulin levels.
  12. [12]
    When one size does not fit all: Reconsidering PCOS etiology ...
    Mar 31, 2024 · A HOMA index >2.5 is commonly associated with IR and can aid a subsequent diagnosis (Matthews et al., 1985). However, for a PCOS diagnosis, an ...
  13. [13]
    Insulin resistance in polycystic ovary syndrome across various tissues
    Jan 11, 2023 · HOMA-IR is currently the best and most widely validated marker, but the cut-off point for the diagnosis of PCOS-IR is still not universally ...<|control11|><|separator|>
  14. [14]
    mediating effects of HOMA-IR and evidence from a national cohort
    Aug 7, 2025 · This study analyzed 19,780 National Health and Nutrition Examination Survey (NHANES) participants (1999–2020), examining the atherogenic index ...
  15. [15]
    Metformin for early comorbid glucose dysregulation and ... - Nature
    Apr 14, 2021 · Metformin has previously been shown to increase weight loss and improve insulin sensitivity (as measured by HOMA-IR) in patients with ...
  16. [16]
    A multicentre, double‐blind, placebo‐controlled, randomized ...
    Feb 29, 2024 · Compliance with clinical trial drugs during the main study period ... HOMA-IR, homeostatic model assessment of insulin resistance index.<|separator|>
  17. [17]
    Associations of Homeostatic Model Assessment for Insulin ...
    Jul 20, 2023 · This study aimed to identify the associations among insulin resistance as defined by homeostatic model assessment for insulin resistance (HOMA- ...<|control11|><|separator|>
  18. [18]
    Association between different insulin resistance surrogates and all ...
    Feb 28, 2024 · HOMA-IR was associated with all-cause mortality risk in a U-shaped manner, and high or low HOMA-IR increased the risk of all-cause mortality in ...
  19. [19]
    Assessment of preferred methods to measure insulin resistance in ...
    Jan 7, 2021 · The major advantage of both the QUICKI and HOMA models is that they both require blood to be drawn only once from a fasted patient.
  20. [20]
    HOMA-IR is an effective biomarker of non-alcoholic fatty liver ... - NIH
    Oct 20, 2023 · HOMA-IR may be the first choice for large-scale NAFLD screening studies and may be widely used in the identification and subsequent management ...
  21. [21]
    HOMA IR - Insulin Resistance Calculator - The Blood Code
    Less than 1.0 means you are insulin-sensitive which is optimal. Above 1.9 indicates early insulin resistance. Above 2.9 indicates significant insulin resistance ...
  22. [22]
    The cut-off value for HOMA-IR discriminating the insulin resistance ...
    Mar 10, 2023 · Our study suggests that the cut-off point for HOMA-IR discriminating the insulin resistance based on the SHBG level, in young Caucasian women with polycystic ...
  23. [23]
    Lipoprotein Insulin Resistance Index: A Simple, Accurate Method for ...
    Optimal cut-offs in insulin resistant South Asian individuals for surrogate indices were determined as HOMA-IR, >2.29; QUICKI, <0.336; Matsuda, <4.28; Adipo-IR, > ...
  24. [24]
    Altered Body Composition and Cytokine Production in Patients ... - NIH
    Jul 17, 2024 · The normal range for HOMA-B is 70–150% [21]. HOMA-B < 70 indicates beta cell dysfunction, whereas HOMA-B > 150 indicates hyperinsulinemia.
  25. [25]
    Insulin resistance (HOMA-IR) cut-off values and the metabolic ...
    In diabetic individuals the optimal HOMA-IR cut-off value for MetSATPIII was 1.60 (sensitivity, 0.63; specificity, 0.73) in men and 1.58 (sensitivity, 0.68; ...
  26. [26]
    HOMA-IR mean values in healthy individuals: a population-based ...
    They proposed the mean value of 2.0 ± 1.1 in the total population and 1.9 ± 1.0 for women and 2.1 ± 1.2 for men. In another multicenter cross-sectional survey, ...
  27. [27]
    Limitation of the validity of the homeostasis model ... - PubMed
    The limitation of the validity of the HOMA-IR should be carefully considered in subjects with a lower BMI, a lower beta cell function, and high fasting glucose ...
  28. [28]
    Correlation between measures of insulin resistance in fasting and ...
    Sep 7, 2011 · Measures of insulin resistance have not been validated in non-fasting blood samples. Our objective was to assess the correlations between ...
  29. [29]
    Homeostasis Model Assessment Is a Reliable Indicator of Insulin ...
    Diabetes was diagnosed according to the criteria of the American Diabetes Association (14). Subjects with fasting plasma glucose levels ≥7.0 mmol/l were ...
  30. [30]
    Validity and reproducibility of HOMA-IR, 1/HOMA-IR, QUICKI and ...
    The aim of this study was to evaluate the validity and reliability of homeostasis model assessment-insulin resistance (HOMA-IR) index, its reciprocal ...Missing: variability | Show results with:variability
  31. [31]
    Glucose clamp technique: a method for quantifying insulin secretion ...
    Euglycemic insulin clamp technique. The plasma insulin concentration is acutely raised and maintained at approximately 100 muU/ml by a prime-continuous infusion ...
  32. [32]
    Hyperinsulinemic-Euglycemic Clamp Technique - ScienceDirect.com
    The hyperinsulinemic-euglycemic clamp technique developed by DeFronzo et al. [71] in 1979 is considered the gold standard for measuring IR and IS.
  33. [33]
    Measuring and estimating insulin resistance in clinical and research ...
    Jul 27, 2022 · The article discusses how to measure insulin resistance in muscle, liver, and adipose tissue in human participants.
  34. [34]
    Limitations in the Use of Indices Using Glucose and Insulin Levels to ...
    The gold standard approach for measuring insulin resistance is euglycemic-hyperinsulinemic clamp (2); however, it is rarely used in clinical practice and in ...
  35. [35]
    A Simple, Accurate Method for Assessing Insulin Sensitivity In Humans
    We conclude that QUICKI is an index of insulin sensitivity obtained from a fasting blood sample that may be useful for clinical research.
  36. [36]
    Surrogate markers of insulin resistance: A review
    May 15, 2010 · Homeostasis model assessment closely mirrors the glucose clamp technique in the assessment of insulin sensitivity: studies in subjects with ...Missing: motivation | Show results with:motivation
  37. [37]
    Diagnosing Insulin Resistance in the General Population
    Mar 1, 2001 · OBJECTIVE—Difficulties in measuring insulin sensitivity prevent the identification of insulin-resistant individuals in the general ...Research Design And Methods · Results · Conclusions
  38. [38]
    Surrogate measures of insulin sensitivity vs the hyperinsulinaemic ...
    Jun 3, 2014 · The revised QUICKI fasting surrogate measure appears to be as good as the OGTT-based Stumvoll MCR, OGIS, Matsuda, Stumvoll ISI and Gutt indices ...
  39. [39]
    Insulin sensitivity indices obtained from oral glucose tolerance testing
    In this study, we compare various insulin sensitivity indices derived from the OGTT with whole-body insulin sensitivity measured by the euglycemic insulin ...
  40. [40]
    Comparison of Various Indices in Identifying Insulin Resistance and ...
    Although QUICKI uses fasting values such as HOMA and HOMA2, it ranked superior to all the indices with regards to its predictive accuracy as evident by the ...