Literature DB >> 34019229

Deterioration of Health-Related Quality of Life After Withdrawal of Risankizumab Treatment in Patients with Moderate-to-Severe Plaque Psoriasis: A Machine Learning Predictive Model.

Kim A Papp1, Ahmed M Soliman2, Nicolae Done3, Christopher Carley3, Esteban Lemus Wirtz3, Luis Puig4.   

Abstract

INTRODUCTION: Risankizumab has demonstrated efficacy in treating moderate-to-severe psoriasis. The phase-3 IMMhance trial (NCT02672852) examined the effect of continuing versus withdrawing from risankizumab treatment on psoriasis severity, including the Psoriasis Area and Severity Index (PASI) and static Physician Global Assessment (sPGA). However, the effect of withdrawal on health-related quality of life (HRQL) was not assessed. Therefore, this study was conducted to evaluate the impact of risankizumab withdrawal on HRQL measured by the Dermatology Life Quality Index (DLQI). Because DLQI was not measured beyond week 16 in IMMhance, a machine learning predictive model for DLQI was developed.
METHODS: A machine learning model for DLQI was fitted using repeated measures data from three phase-3 trials (NCT02684370, NCT02684357, NCT02694523) (pooled N = 1602). An elastic-net algorithm performed automated variable selection among candidate predictors including concurrent PASI and sPGA, demographics, and interaction terms. The machine learning model was used to predict DLQI at weeks 28-104 of IMMhance among patients re-randomized to continue (N = 111) or withdraw from (N = 225) risankizumab after achieving response (sPGA = 0/1) at week 28.
RESULTS: The machine learning predictive model demonstrated good statistical fit during tenfold cross-validation and external validation against observed DLQI at weeks 0-16 of IMMhance (N = 507). Predicted improvements in DLQI from baseline were lower in the withdrawal versus the continuation cohort (mean DLQI change at week 104, -5.9 versus -11.5, difference [95% CI] = 5.6 [4.1, 7.3]). Predicted DLQI deteriorated more extensively than PASI (49.7% versus 36.4%) after treatment withdrawal.
CONCLUSIONS: The predicted DLQI score deteriorated more rapidly after risankizumab withdrawal than the PASI score, an objective measure of disease. These findings suggest that the deterioration in HRQL reflects more substantial impacts after risankizumab discontinuation than those measured by PASI only.
© 2021. The Author(s).

Entities:  

Keywords:  DLQI; Machine learning; PASI; Psoriasis; Quality of life; Risankizumab

Year:  2021        PMID: 34019229      PMCID: PMC8322223          DOI: 10.1007/s13555-021-00550-8

Source DB:  PubMed          Journal:  Dermatol Ther (Heidelb)


Key Summary Points

Digital Features

This article is published with digital features, including a summary slide, to facilitate understanding of the article. To view digital features for this article, go to https://doi.org/10.6084/m9.figshare.14541864.

Introduction

Plaque psoriasis is a chronic inflammatory skin condition, characterized by pruritic and scaly lesions (plaques) throughout the patient’s body [1]. Patients with plaque psoriasis experience debilitating pain, stigmatization [2], and psychosocial impairments [3, 4] due to the appearance of lesions, and are susceptible to multiple comorbidities (e.g., metabolic syndrome, cardiovascular disease) [5]. This has resulted in a substantial decrease in patients’ health-related quality of life (HRQL) [6-9], which typically correlates with disease severity (e.g., mild, moderate, severe) [5]. Although there is no cure for psoriasis, treatments are available to assist in providing sustained clearance of lesions, particularly among patients with moderate-to-severe plaque psoriasis [10]. Several clinician-reported outcome measures are used to evaluate the magnitude of the disease burden and the effectiveness of therapies in clinical studies and real-world practice [11]. The Psoriasis Area and Severity Index (PASI) is a commonly used instrument for measuring psoriasis severity and evaluating treatment response. PASI scores measure psoriasis symptom involvement of four body sections: head, upper extremities, trunk, and lower extremities [12]. The static Physician Global Assessment (sPGA) is a widely used, clinician-reported instrument for measuring psoriasis severity based on induration, scaling, and erythema, with scores from 0 (clear) to 5 (severe) [13]. Although clinician-reported instruments can provide objective assessments of symptom control, assessments of treatment effectiveness must also include the patient perspective, particularly during clinical trials used to inform treatment selection and optimization in real-world practice. This requires the use of instruments that incorporate patient-reported outcomes (PROs) [14, 15]. The Dermatology Quality Index (DLQI) is a PRO tool used to assess HRQL across six domains (patient’s perception of symptoms and feelings, daily activities, leisure, work and school, interpersonal relationships, and treatment) [16]. Risankizumab is a fully humanized monoclonal antibody with a high affinity for the p19 component of interleukin (IL)-23, a cytokine that plays a key role in the pathogenesis of psoriasis [17]. Recently, data from four large, multicenter, phase 3 randomized controlled trials, including UltIMMa-1 (NCT02684370), UltIMMa-2 (NCT02684357), IMMvent (NCT02694523), and IMMhance (NCT02672852), showed significantly greater efficacy with risankizumab versus placebo [18-20], ustekinumab [19], and adalimumab [20] as measured by relative improvements from baseline in PASI and DLQI. The IMMhance trial also investigated the impact of randomized withdrawal from risankizumab among patients who achieved an initial response at week 28 [18]. Data from IMMhance showed that continuous treatment provided significantly better long-term disease control than withdrawal (at week 52: 87% versus 61%, p < 0.001) [21]. However, in IMMhance, DLQI was only collected through week 16, and thus the corresponding impact of treatment withdrawal on HRQL could not be directly assessed. To circumvent the limitation of outcome availability only for a limited number of patient visits, the current study assessed the deterioration of HRQL following risankizumab treatment withdrawal using a machine learning predictive model to assess DLQI among patients in the IMMhance trial.

Methods

Data Sources

The data used in this study were from four phase-3 randomized, double-blind controlled, trials (UltIMMa-1, UltIMMa-2, IMMvent, and IMMhance) of risankizumab for the treatment of moderate-to-severe plaque psoriasis (Fig. 1).
Fig. 1

Data sources and patient flowchart in the clinical trials included in the analysis. At week 28 of IMMhance, patients originally randomized to risankizumab who achieved a sPGA score of 0 or 1 were re-randomized to either risankizumab or placebo. Starting from week 32, week 28 responders who experienced relapse (sPGA ≥ 3) were switched to open-label risankizumab 150 mg. ADA adalimumab, Q2W every 2 weeks, Q12W every 12 weeks, RZB risankizumab, UST ustekinumab, Wk week

Data sources and patient flowchart in the clinical trials included in the analysis. At week 28 of IMMhance, patients originally randomized to risankizumab who achieved a sPGA score of 0 or 1 were re-randomized to either risankizumab or placebo. Starting from week 32, week 28 responders who experienced relapse (sPGA ≥ 3) were switched to open-label risankizumab 150 mg. ADA adalimumab, Q2W every 2 weeks, Q12W every 12 weeks, RZB risankizumab, UST ustekinumab, Wk week

UltIMMa-1 and UltIMMa-2 Trials

Patients in the UltIMMa-1 and UltIMMa-2 trials were randomized 3:1:1 at baseline to risankizumab (150 mg at weeks 0 and 4 followed by every 12 weeks), ustekinumab (45 or 90 mg at weeks 0 and 4 followed by every 12 weeks), or placebo (weeks 0 and 4 followed by cross-over to risankizumab 150 mg every 12 weeks after an initial 16-week double-blind period)[19]. DLQI was collected at weeks 0, 12, 16, and 52. Candidate predictor variables were collected at all visits through week 52.

IMMvent Trial

Patients in the IMMvent trial were randomized 1:1 at baseline to risankizumab (150 mg at weeks 0 and 4 followed by every 12 weeks) or adalimumab (90 mg at week 0, followed by 40 mg at week 1 and every 2 weeks thereafter)[20]. At week 16, patients initially randomized to adalimumab were switched to risankizumab if < PASI50, remained on adalimumab if ≥ PASI90, or were re-randomized 1:1 to either risankizumab or adalimumab if ≥ PASI50 and < PASI90. DLQI was collected at weeks 0, 16, and 44. Candidate predictor variables were collected at all visits through week 44.

IMMhance Trial

Patients in the IMMhance trial were randomized 4:1 at baseline to risankizumab 150 mg or placebo [18]. Patients received a dose of study medication at week 0, week 4, and every 12 weeks thereafter. At week 16, patients randomized to placebo started receiving active treatment with risankizumab 150 mg every 12 weeks and continued until the end of the treatment period. At week 28, patients randomized to risankizumab who achieved an sPGA score of 0 or 1 were re-randomized to either risankizumab or placebo. Starting from week 32, week 28 responders who experienced relapse (sPGA ≥ 3) were switched to open-label risankizumab 150 mg every 12 weeks. DLQI was collected at weeks 0, 12, and 16. Candidate predictor variables were collected at all visits through week 104.

Inclusion Criteria

Model development included all patients in the intention-to-treat populations of UltIMMa-1, UltIMMa-2, and IMMvent who had visits with concurrently available DLQI and predictor variable measurements. External model validation included all patients in the intention-to-treat population of the IMMhance trial who had visits with concurrently available DLQI and predictor variable measurements at weeks 0, 12, or 16. In the score prediction phase, DLQI scores were predicted among patients originally randomized to risankizumab in IMMhance who achieved sPGA of 0 or 1 at week 28 and were consequently re-randomized to continue risankizumab or switch to placebo. The treatment cohort was defined according to the intention-to-treat re-randomization group. DLQI scores were predicted for patient visits with concurrently available predictor variable measurements.

Compliance with Ethics Guidelines

This article is based on previously conducted studies and does not contain any new studies with human participants performed by any of the authors. The trials included in this study were approved by each site’s institutional review board and were performed in accordance with the Helsinki Declaration of 1964, and its later amendments.

Outcome Measure and Candidate Predictors

The outcome of interest was the total DLQI score, which served as the dependent variable in the predictive regression models. Candidate predictors including the PASI total score, PASI body section subscores, and the sPGA score were considered for inclusion in the prediction model of DLQI as concurrent measures of psoriasis severity. Baseline candidate predictors included demographics (age, sex, and race), weight, duration of psoriasis, and history of use of systemic biologic therapy. Additionally, several squared terms (age2, weight2, disease duration2, sPGA2, total PASI2) and interaction terms (PASI × age, PASI × weight, PASI × sex, sPGA × age, sPGA × weight, sPGA × sex) were considered as candidate predictors.

Baseline Characteristics

Baseline characteristics were summarized for the intention-to-treat populations in UltIMMa-1, UltIMMa-2, IMMvent, and IMMhance, and for each re-randomized cohort in IMMhance. Patient characteristics assessed included DLQI and all candidate predictors. Means and standard deviations were summarized for continuous variables; counts and percentages were summarized for categorical variables. Statistical comparisons between re-randomized cohorts in the IMMhance trial were conducted using one-way analysis of variance for continuous variables and χ2 tests for dichotomous variables.

Model Development and Validation

Repeated-measures linear regression models for DLQI score prediction were developed with pooled data from UltIMMa-1, UltIMMa-2, and IMMvent, using cross-validation to prevent model overfitting. In addition to several model specifications with progressively expanded predictor subsets, machine learning algorithms including elastic net and least absolute shrinkage and selection operator (LASSO) regression were used to automate variable selection from among the full set of candidate predictors. The best-fitting models were further validated in the IMMhance population using all patient visits with concurrently available DLQI scores (at weeks 0, 12, and 16) and predictor variables. The predictive performance of all models was assessed using the cross-validated mean absolute error (MAE) and the coefficient of determination (R2).

DLQI Prediction and Calculation of DLQI and PASI Deterioration

Longitudinal analyses of predicted DLQI scores were conducted to examine the deterioration of HRQL associated with risankizumab treatment withdrawal after achievement of response in the IMMhance trial. The treatment cohort [risankizumab versus placebo, (i.e., withdrawal)] was defined according to intention-to-treat re-randomization groups. For each study visit in part B (weeks 28 +) of the IMMhance trial, the mean change in DLQI score from baseline was modeled in each re-randomization group based on the difference between DLQI scores predicted at the visit versus the score observed at baseline. A bootstrapping approach was used to obtain 95% confidence intervals (CIs) around the mean change from baseline in DLQI in each re-randomization group and around the between-group difference at each visit. Percent maintenance of score improvement from baseline to week 28 was assessed for predicted DLQI scores and observed PASI in each re-randomization group. For patients who switched to open-label risankizumab because of relapse, or who were lost to follow-up, last observation carried forward (LOCF) was used to impute PASI and sPGA scores at subsequent visits. Additional methodological details are provided in Appendix 1 of the electronic supplementary material.

Results

A total of 2109 subjects were included in the samples used for model training and validation (UltIMMa-1 and UltIMMa-2: 997; IMMvent: 605; IMMhance: 507), and 336 subjects were included in the sample used for DLQI prediction (IMMhance re-randomized placebo: 225; risankizumab: 111). Baseline characteristics were well balanced across the intention-to-treat populations of the clinical trials used in the model development and validation phase (Table 1). The mean age across cohorts ranged between 46.2 and 49.3 years, and between 25.2% and 30.7% of patients were female. The mean DLQI score ranged between 13.0 and 13.7, and the total PASI score ranged between 19.7 and 20.2. Similarly, baseline characteristics were balanced across the re-randomized cohorts used for longitudinal DLQI score predictions.
Table 1

Baseline characteristics for patients whose data were used in the study

Sample used for model training and validationSample used for DLQI prediction (IMMhance re-randomized)
UltIMMa-1 & UltIMMa-2IMMventIMMhancePBO patientsRZB patientsp-value
N = 997N = 605N = 507N = 225N = 111
Demographics and clinical characteristics
 Age (years), mean (SD)47.4 ± 13.746.2 ± 13.549.2 ± 13.349.3 ± 13.148.2 ± 13.40.457
 Female, n (%)300 (30.1%)183 (30.2%)151 (29.8%)69 (30.7%)28 (25.2%)0.301
 White race, n (%)778 (78.0%)508 (84.0%)402 (79.3%)177 (78.7%)82 (73.9%)0.326
 Weight (kg), mean (SD)90.1 ± 21.990.1 ± 23.992.0 ± 22.991.0 ± 22.291.3 ± 23.70.897
 Duration of psoriasis (years), mean (SD)18.1 ± 12.518.2 ± 12.319.9 ± 13.020.4 ± 13.419.4 ± 13.10.505
 Prior biologic systemic therapy, n (%)377 (37.8%)229 (37.9%)281 (55.4%)125 (55.6%)57 (51.4%)0.467
Measure of disease severity, mean (SD)
 DLQI13.0 ± 7.013.7 ± 7.213.4 ± 7.113.0 ± 7.213.0 ± 6.90.992
 sPGA3.2 ± 0.43.2 ± 0.43.2 ± 0.43.2 ± 0.43.2 ± 0.40.302
PASI score
  Total PASI score20.1 ± 7.419.8 ± 7.520.2 ± 8.119.7 ± 7.320.2 ± 8.90.526
Subtotal (area score × lesion score)
  Head16.3 ± 11.916.9 ± 11.817.0 ± 11.216.7 ± 10.318.8 ± 13.10.113
  Trunk18.1 ± 10.317.9 ± 9.818.5 ± 10.718.2 ± 9.518.5 ± 11.80.759
  Upper extremities19.5 ± 9.118.5 ± 9.119.4 ± 9.119.3 ± 9.018.9 ± 9.00.724
  Lower extremities22.9 ± 9.722.7 ± 10.122.6 ± 10.521.7 ± 9.722.6 ± 11.40.485

DLQI Dermatology Life Quality Index, PASI Psoriasis Area and Severity Index, PBO placebo, RZB risankizumab, SD standard deviation, sPGA static Physician’s Global Assessment

Baseline characteristics for patients whose data were used in the study DLQI Dermatology Life Quality Index, PASI Psoriasis Area and Severity Index, PBO placebo, RZB risankizumab, SD standard deviation, sPGA static Physician’s Global Assessment The prediction models for DLQI demonstrated significant, positive associations between DLQI and PASI across all specifications tested (Supplemental Table S1). The saturated model and elastic-net selected model demonstrated the best predictive performance out of the models tested, as measured by R2 and MAE. Due to the high predictive performance and relative parsimony, the elastic net model was chosen for the prediction of longitudinal DLQI scores among re-randomized patients in part B of the IMMhance trial. The predicted DLQI scores among patients who were re-randomized at week 28 in the IMMhance trial mirrored the observed DLQI scores closely at weeks 0, 12, and 16, further demonstrating the high out-of-sample predictive performance of the elastic net model (Fig. 2a). Moreover, the predicted DLQI scores closely mirrored the observed scores for patients in the UltIMMa-1/2 and IMMvent trials who achieved PASI100 response at week 16 but then lost this response at week 52 or 44 (Fig. 2b), confirming the high predictive performance of the elastic net model among patients who respond to therapy and then experience a deterioration of response.
Fig. 2

a Mean predicted versus observed DLQI scores for weeks 0–16 among patients re-randomized at week 28 in the IMMhance trial; b mean predicted versus observed DLQI scores in the UltIMMa-1, UltIMMa-2, and IMMvent trials among patients who achieved PASI 100 response at week 16 and then lost PASI 100 response at week 44 or 52. DLQI Dermatology Life Quality Index, PASI Psoriasis Area and Severity Index

a Mean predicted versus observed DLQI scores for weeks 0–16 among patients re-randomized at week 28 in the IMMhance trial; b mean predicted versus observed DLQI scores in the UltIMMa-1, UltIMMa-2, and IMMvent trials among patients who achieved PASI 100 response at week 16 and then lost PASI 100 response at week 44 or 52. DLQI Dermatology Life Quality Index, PASI Psoriasis Area and Severity Index

Predicted Change in DLQI

Analysis of predicted DLQI scores using the elastic net model revealed significantly greater deterioration in the cohort re-randomized to placebo relative to the cohort re-randomized to continue risankizumab treatment (Fig. 3a). There was a statistically significant difference in the change in DLQI from baseline between cohorts at week 52 [difference-in-difference = 1.7; 95% CI = (0.2, 3.4)]. Beyond week 52, increasingly larger mean changes in DLQI scores were observed in the withdrawal cohort relative to the risankizumab cohort. These differences were significant at each visit beyond week 52. Raw predicted DLQI scores among re-randomized patients are shown in Supplemental Fig. S1.
Fig. 3

a Change in predicted DLQI from baseline among re-randomized patients in the IMMhance trial. DLQI scores were predicted among patients originally randomized to risankizumab who were consequently re-randomized to continue risankizumab or switch to placebo in part B (weeks 28 +) of the IMMhance trial. An LOCF method was used to carry forward measurements for visits with missing measures; b change in PASI from baseline among re-randomized patients in the IMMhance trial. PASI scores were assessed among patients originally randomized to risankizumab who were consequently re-randomized to continue risankizumab or switch to placebo in part B (weeks 28 +) of the IMMhance trial. An LOCF method was used to carry forward measurements for visits with missing measures. CI confidence interval, DLQI Dermatology Life Quality Index, LOCF last observation carried forward, PBO placebo, RZB risankizumab

a Change in predicted DLQI from baseline among re-randomized patients in the IMMhance trial. DLQI scores were predicted among patients originally randomized to risankizumab who were consequently re-randomized to continue risankizumab or switch to placebo in part B (weeks 28 +) of the IMMhance trial. An LOCF method was used to carry forward measurements for visits with missing measures; b change in PASI from baseline among re-randomized patients in the IMMhance trial. PASI scores were assessed among patients originally randomized to risankizumab who were consequently re-randomized to continue risankizumab or switch to placebo in part B (weeks 28 +) of the IMMhance trial. An LOCF method was used to carry forward measurements for visits with missing measures. CI confidence interval, DLQI Dermatology Life Quality Index, LOCF last observation carried forward, PBO placebo, RZB risankizumab

Maintenance of DLQI and PASI Score Improvement

The cohort re-randomized to placebo showed deterioration in observed PASI scores and predicted DLQI scores over time, while the cohort re-randomized to continue risankizumab treatment had near-complete maintenance of both scores (Fig. 3). Predicted improvements in DLQI from baseline were lower in the withdrawal versus the continuation cohort [mean DLQI change at week 104, −5.9 versus −11.5, difference, 95% CI = 5.6 (4.1, 7.3)] (Fig. 3a). For patients in the withdrawal cohort, the DLQI score improvement achieved from baseline to week 28 deteriorated more rapidly after withdrawal compared with the deterioration in PASI score improvement (Fig. 4). At the end of follow-up (week 104), DLQI score improvement from baseline to week 28 had deteriorated by 49.7%; PASI score improvement at week 28 deteriorated by 36.4% by week 104. The difference in deterioration of DLQI versus PASI among patients who withdrew from risankizumab was statistically significantly different by week 40 [difference (95% CI) =  −1.6% (−2.9%, −0.2%)], and in all weeks thereafter (Fig. 4). Changes in sPGA from baseline are shown in Supplemental Figure S2.
Fig. 4

Maintenance of DLQI and PASI score improvement following treatment re-randomization in the IMMhance trial. Maintenance of score improvement from week 28 was calculated as 100%—[100% × (change in score from baseline to week 28 − change in score from baseline to week x)/(change in score from baseline to week 28)]. Maintenance of 100% indicates complete maintenance of week 28 improvement; maintenance of 0% indicates a return to baseline score. The vertical line at week 40 indicates the first visit when the percent deterioration difference in DLQI versus PASI becomes statistically significant. DLQI Dermatology Life Quality Index, LOCF last observation carried forward, PASI Psoriasis Area and Severity Score, PBO placebo, RZB risankizumab

Maintenance of DLQI and PASI score improvement following treatment re-randomization in the IMMhance trial. Maintenance of score improvement from week 28 was calculated as 100%—[100% × (change in score from baseline to week 28 − change in score from baseline to week x)/(change in score from baseline to week 28)]. Maintenance of 100% indicates complete maintenance of week 28 improvement; maintenance of 0% indicates a return to baseline score. The vertical line at week 40 indicates the first visit when the percent deterioration difference in DLQI versus PASI becomes statistically significant. DLQI Dermatology Life Quality Index, LOCF last observation carried forward, PASI Psoriasis Area and Severity Score, PBO placebo, RZB risankizumab

Discussion

Achieving skin clearance is a meaningful improvement to patients with moderate-to-severe psoriasis [22]. Due to the chronic nature of the disease, patients with psoriasis require ongoing treatment to adequately manage symptoms [23]. Although guidelines recommend continuous therapy for patients with psoriasis who are treated with biologic agents [24, 25], gaps in treatment are common in clinical practice [26, 27]. Reasons for treatment interruption vary but can include lack of meaningful improvement, adverse events, and/or patient preference to avoid continuous treatment [28, 29]. The present study demonstrated that the predicted HRQL worsened at a higher rate compared with the PASI score following treatment discontinuation. Despite the significant durability of patients’ response to risankizumab following withdrawal, the deterioration of HRQL is more rapid. These findings align with previous studies, which show that, regardless of the reason for treatment gaps, treatment discontinuation negatively affects patients’ HRQL, particularly those responsive to therapy. Results from a post hoc subanalysis of the double-blind, phase 3 REVEAL trial reported a twofold greater deterioration of HRQL measured by DLQI compared with PASI following withdrawal of adalimumab [30]. Although the results do not allow the identification of the cause for the disproportionate worsening of DLQI, previous research suggests that psychological impacts of disease worsening may be responsible for this pattern [30, 31]. Given the importance in identifying the impact of changes in HRQL to guide treatment optimization, additional studies are warranted to further assess the impact of treatment withdrawal among patients with psoriasis. Methodologically, this study used several regression and machine learning model specifications based on patient characteristics (e.g., age, disease duration, treatment history) and well-established measures of disease severity to achieve robust performance in predicting DLQI scores and thus overcome the challenge of unmeasured scores. The cross-validation procedure helped protect against overfitting, while the additional model testing with IMMhance data at weeks 0, 12, and 16 indicated high out-of-sample predictive ability. Results of the present study showed that the elastic net model achieved the best trade-off between predictive accuracy and model parsimony, highlighting the value of machine learning approaches in selecting relevant predictors among multiple highly correlated measures. Overall, the findings from the machine learning procedure align with results from prior studies that analyzed determinants of HRQL as assessed using DLQI [32-38]. Several studies to date have reported a strong relationship between PASI and DLQI, in diverse patient populations and various settings worldwide [32-38]. Moreover, this is the first study to develop a model for out-of-sample prediction of DLQI based on a diverse set of patient and disease characteristics in psoriasis, and explains a higher proportion of the variation than a previous multivariate model [33]. Based on the models presented, sPGA was predictive of DLQI independently of PASI. This is consistent with previous research showing that, although sPGA and PASI correlate well, the correlation is weaker at the ends of the distribution, which indicates that the two measures may provide independent information about disease severity [39]. The residual predictive ability of the head subscore of PASI was also consistent with a prior study that demonstrated that patients with psoriasis with visible psoriatic lesions have significantly worse HRQL compared with those with nonvisible lesions [33]. Finally, the preferred model specification suggests that the relationship between PASI and DLQI is nonlinear, as indicated by the selection of the PASI squared terms as statistically significant predictors of DLQI scores in addition to the linear PASI total score term. This is consistent with a previous analysis of the relationship between disease severity as measured by PASI and HRQL as measured by EQ-5D-3L [40], which also found a nonlinear association between the two measures. In that analysis, increases in PASI close to zero were shown to have a larger impact on EQ-5D-3L compared with an equally sized increase in PASI at the higher end of the scale, as determined by the inclusion of a PASI squared term as a significant predictor of EQ-5D-3L.

Limitations

This study has several limitations. First, as with all trial-based analyses, the results may not be generalizable to a real-world population, as the study population comprised a group of patients selected on the basis of specific enrollment criteria and followed under well-controlled conditions. Second, despite the high predictive performance of the selected model, the exclusion of other variables not measured in the trial or unavailable at all time points may contribute to prediction error at the individual patient level. The model closely predicted aggregate-level average DLQI scores during external validation, but does not fully explain heterogeneity in DLQI scores across different patients. Third, this study assumed that achieving a given level of clinical symptom control (as measured by PASI and sPGA scores) has the same HRQL benefits regardless of the specific treatment strategy that resulted in that symptom control. However, patients may experience different types and rates of adverse events depending on treatment, which could also contribute to heterogeneity in the HRQL benefits of different treatment strategies. Lastly, inherent limitations exist for the assessments of interest. For example, limitations with the DLQI include inadequate measurement of mild illness and differential item functioning by disease, age, and sex [41, 42], whereas limitations of PASI include poor sensitivity, nonlinear scale, lack of correspondence to clinical severity categories [43], and dependence on the experience level of the clinician performing the measurement [44]. Moreover, lower PASI values are less clinically meaningful, thus precluding valid comparisons across the entire spectrum of PASI scores [30].

Conclusions

Predicted DLQI scores revealed an association between risankizumab treatment withdrawal and HRQL deterioration, as evidenced by a progressive increase in the mean change in the predicted DLQI scores among patients who discontinued versus those who remained on treatment. The predicted HRQL deteriorated more rapidly than the PASI score, an objective measure of disease. Below is the link to the electronic supplementary material. Supplementary file1 (PDF 317 kb)
Why carry out this study?
Although the efficacy of risankizumab in the treatment of moderate-to-severe psoriasis has been demonstrated in a recent phase 3 clinical trial, the impact of its withdrawal on patients’ health-related quality of life (HRQL) has not yet been assessed.
This study was conducted to gain insight regarding the impact of risankizumab withdrawal on HRQL among patients with moderate-to-severe psoriasis from IMMhance using the Dermatology Life Quality Index (DLQI); however, due to the absence of DLQI collected beyond week 16 in clinical trials, a machine learning predictive model was developed to assess the DLQI among patients with moderate-to-severe psoriasis.
What was learned from the study?
The DLQI scores calculated using the machine learning predictive model showed that patients who withdrew from risankizumab experienced more extensive deterioration in their HRQL compared with patients who continuously remained on treatment.
When compared with the Psoriasis Area and Severity Index (PASI), a commonly used objective measure of clinical severity, the DLQI score showed a larger relative decline, suggesting that this measure of HRQL is affected by risankizumab withdrawal more extensively than clinical measures would suggest.
  32 in total

1.  Psoriasis and herpes simplex virus are highly stigmatizing compared with other common dermatologic conditions: A survey-based study.

Authors:  Jessica M Donigan; Vanessa L Pascoe; Alexa B Kimball
Journal:  J Am Acad Dermatol       Date:  2015-09       Impact factor: 11.527

Review 2.  Quality of life in patients with psoriasis: a systematic literature review.

Authors:  John de Korte; Mirjam A Sprangers; Femke M Mombers; Jan D Bos
Journal:  J Investig Dermatol Symp Proc       Date:  2004-03

3.  Population-based epidemiologic study of psoriasis with emphasis on quality of life assessment.

Authors:  J Koo
Journal:  Dermatol Clin       Date:  1996-07       Impact factor: 3.478

Review 4.  Evaluation and management of psoriasis: an internist's guide.

Authors:  Danielle Levine; Alice Gottlieb
Journal:  Med Clin North Am       Date:  2009-11       Impact factor: 5.456

5.  Psoriasis severity and the prevalence of major medical comorbidity: a population-based study.

Authors:  Howa Yeung; Junko Takeshita; Nehal N Mehta; Stephen E Kimmel; Alexis Ogdie; David J Margolis; Daniel B Shin; Rosemary Attor; Andrea B Troxel; Joel M Gelfand
Journal:  JAMA Dermatol       Date:  2013-10       Impact factor: 10.282

Review 6.  Psoriasis and the metabolic syndrome.

Authors:  Paolo Gisondi; Anna Chiara Fostini; Irene Fossà; Giampiero Girolomoni; Giovanni Targher
Journal:  Clin Dermatol       Date:  2017-09-08       Impact factor: 3.541

Review 7.  Psoriasis: from Pathogenesis to Targeted Therapies.

Authors:  Curdin Conrad; Michel Gilliet
Journal:  Clin Rev Allergy Immunol       Date:  2018-02       Impact factor: 8.667

8.  Psychological Distress, Alexithymia and Alcohol Misuse in Patients with Psoriasis: A Cross-Sectional Study.

Authors:  Ourania Founta; Karoline Adamzik; Anne-Marie Tobin; Brian Kirby; David Hevey
Journal:  J Clin Psychol Med Settings       Date:  2019-06

9.  An update on psoriasis and metabolic syndrome: A meta-analysis of observational studies.

Authors:  Sanminder Singh; Paulina Young; April W Armstrong
Journal:  PLoS One       Date:  2017-07-18       Impact factor: 3.240

Review 10.  A systematic review of worldwide epidemiology of psoriasis.

Authors:  I M Michalek; B Loring; S M John
Journal:  J Eur Acad Dermatol Venereol       Date:  2016-08-30       Impact factor: 6.166

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.