Literature DB >> 33243162

Cost-utility analysis of pralatrexate for relapsed or refractory peripheral T-cell lymphoma based on a case-matched historical control study along with single arm clinical trial.

Seonyoung Park1, Ah-Young Kim1,2, Hyeonseok Cho2, Deborah Baik2, Hankil Lee3,4, Sunghwa Cho1, Hye-Young Kang5.   

Abstract

BACKGROUND: Patients with relapsed or refractory peripheral T-cell lymphoma (R/R PTCL) treated with pralatrexate have previously shown superior overall survival (OS) compared to those who underwent conventional chemotherapy (CC, 15.4 vs. 4.07 months). We conducted an economic evaluation of pralatrexate from a societal perspective in Korea based on data from the PROPEL phase II study.
METHODS: Using a Markov model with a weekly cycle, we simulated the experience of patients with R/R PTCL receiving pralatrexate or CC for 15 years. The model consists of five health states; initial treatment, treatment pause, subsequent treatment, stem cell transplantation (SCT) success, and death. Comparative effectiveness was based on PROPEL phase II single-arm study and its matched historical control analysis. Costs included drug, drug administration, monitoring, adverse event management, and SCT costs.
RESULTS: The incremental cost-effectiveness ratio of the base case was $39,153 per quality-adjusted life-year (QALY) gained. The results of one-way sensitivity analysis ranged from $33,949 to $51,846 per QALY gained, which remained within an implicit willingness-to-pay (WTP) threshold of anticancer drugs in Korea.
CONCLUSIONS: Pralatrexate is a cost-effective intervention with improved OS and incremental costs within the WTP limit. Pralatrexate could function as a new therapeutic option for patients suffering from life-threatening R/R PTCL.

Entities:  

Keywords:  Case-matched control analysis; Cost-utility analysis; Peripheral T-cell lymphoma; Pralatrexate

Mesh:

Substances:

Year:  2020        PMID: 33243162      PMCID: PMC7690091          DOI: 10.1186/s12885-020-07629-z

Source DB:  PubMed          Journal:  BMC Cancer        ISSN: 1471-2407            Impact factor:   4.430


Background

Peripheral T-cell lymphoma (PTCL) is an aggressive and heterogeneous type of lymphoma that constitutes 7% of non-Hodgkin lymphoma (NHL) [1]. Although the incidence of PTCL is low (< 1 case per 100,000 population in the USA) [2], it has been increasing, in part due to advances in diagnosis methods as well as due to the aging population [3]. In contrast to other NHLs, PTCL has poor treatment outcomes with a five-year survival rate of 32% [4]. Approximately 68% of patients with PTCL are relapsed or refractory (R/R) to conventional chemotherapy (CC) [5]. Prognosis is more unfavorable for R/R PTCL, and no standard care exists. Median overall survival (OS) is 5.8 months, with three-year OS rates of less than 30% [5]. Pralatrexate is a single antifolate agent. By penetrating cancer cells, pralatrexate inhibits dihydrofolate reductase, thereby depleting the levels of biological molecules requiring thymidine or single carbon transfer, eventually causing cell death. Since pralatrexate is administered in an outpatient setting, it is more convenient than CC, which requires hospitalization for consecutive injections. The clinical outcomes of pralatrexate (OS: 14.5 months) were investigated by a phase II, single-arm, open label, international multicenter study (PROPEL study) on 111 patients with R/R PTCL [6]. Although the PROPEL study is the largest prospective study, it does not provide the comparative effectiveness of the drug. Therefore, as a follow-up study of PROPEL, a 1:1 case-matched control analysis (CMCA) of pralatrexate to CC was conducted using propensity score matching. Pralatrexate has shown superior clinical outcomes in terms of OS compared to CC, with significant improvement from 4.07 to 15.24 months [7]. Although pralatrexate use is advantageous due to improved OS, the increasing cost may prevent it from being widely accepted. Therefore, we assessed the cost-effectiveness of pralatrexate to better understand both the clinical and economic value of pralatrexate in the treatment of patient with R/R PTCL in Korea based on data from the PROPEL phase II study.

Methods

Model structure

Using a Markov cohort model, the experience of patients with R/R PTCL receiving pralatrexate (treatment arm) or CC (comparator arm) was simulated. The cycle length of model, in which a health state transition can occur, was set as a week. The simulation began at 48 years of age, reflecting the mean age of Korean patients with R/R PTCL [8], and continued for 15 years. The model consisted of five health states; initial treatment, treatment pause, subsequent treatment, stem cell transplantation (SCT) success, and death (Fig. 1). All four alive health states can transition to death throughout the simulation. Except “SCT success” and “death” states, each health state was composed of four nested states; complete response (CR), partial response (PR), stable disease (SD), and progressive disease (PD). According to the PROPEL study, the proportion of patients achieving CR, PR, SD, or PD as a result of initial treatment with pralatrexate is 12.6, 21.2, 22.1, and 44.2%, respectively. Among the Korean patients included in the CMCA study [7], 19.8, 21.4, 3.2%, or 55.6% achieve CR, PR, SD, or PD following initial treatment with CC, respectively.
Fig. 1

Structure of Markov model to assess cost-effectiveness of pralatrexate in treating R/R PTCL. (a) corresponds to state-transition diagram and (b) corresponds to decision tree. CC, conventional chemotherapy; CR, complete response; PD, progressive disease; PR, partial response; PTCL, peripheral T-cell lymphoma; R/R, relapsed or refractory; SCT, stem cell transplantation; SD, stable disease.

Structure of Markov model to assess cost-effectiveness of pralatrexate in treating R/R PTCL. (a) corresponds to state-transition diagram and (b) corresponds to decision tree. CC, conventional chemotherapy; CR, complete response; PD, progressive disease; PR, partial response; PTCL, peripheral T-cell lymphoma; R/R, relapsed or refractory; SCT, stem cell transplantation; SD, stable disease. Patients from each arm began the simulation at the “initial treatment” state. It was assumed that the initial treatment state lasts for 14 weeks because the drug regimen for pralatrexate and CC is two treatment cycles with a seven-week cycle [6] and 4.67 cycles with a three-week cycle (according to a local clinician survey), respectively. After completing the initial treatment, patients moved to the “treatment pause” stage, if they survived, for 8 weeks until subsequent treatment began. It was assumed that the response rate during the treatment pause state was the same as that during the initial treatment state. Among patients achieving CR or PR, those receiving SCT with a successful outcome moved to the “SCT success state” and it was presumed that they will have the same survival rate and quality of life as the general population. Therefore, the age-specific mortality rate of the general population provided by the Korean National Statistics Office was applied to them. Regardless of the type of drug treatments provided, the probability of receiving SCT in the treatment pause state following initial treatment was assumed to be 0.529 based on an expert panel survey of six clinicians who treat most R/R PTCL patients in Korea. The probability of success among those receiving SCT, defined as survival for at least 1 year, was 0.663 based on a local study [9]. In general, patients with R/R PTCL receive SCT when they achieve the best response [1]. According to the clinician panel survey, the median time of Korean patients with R/R PTCL achieving the best response is 20 weeks following initial treatment. Therefore, we assumed that SCT is performed at the 20th week from the start of initial treatment. Patients with CR not receiving SCT or receiving SCT with failure remained in the “treatment pause state” for the rest of the model simulation. The other patients (i.e., patients with PR not receiving SCT or receiving SCT with failure, and patients with SD or PD) transitioned to the “subsequent treatment” state at the 23rd week from the start of model simulation. In the subsequent treatment state, all patients from either the treatment or comparator arm received CC for 4.33 cycles with a three-week cycle (according to a local clinician survey). After completing subsequent therapy, patients moved to the “treatment pause” state again on the 36th week. Among the Korean patients included in the CMCA study [7], the proportion of patients achieving CR, PR, SD, or PD following subsequent treatment was 12.3, 15.8, 3.5%, or 68.4%, respectively. Among patients with CR or PR in the treatment pause state, those receiving SCT with successful outcomes moved to the “SCT success state.” The probability of receiving SCT in the treatment pause state following subsequent treatment was assumed to be 0.458 based on the local clinician survey. The same probability of SCT success (0.663) was used. Applying local practice patterns, it was assumed that patients receive SCT at the 42nd week, which is 20 weeks after the subsequent therapy begins. The other patients (i.e., patients with CR or PR not receiving SCT or receiving SCT with failure, and patients with SD or PD) remained in the “treatment pause state” for the rest of the model simulation.

Comparators

Patients assigned to the comparator arm were assumed to receive CC, such as DHAP (dexamethasone, cisplatin, and cytarabine), ESHAP (etoposide, methylprednisolone, cytarabine, and cisplatin), or ICE (ifosfamide, carboplatin, and etoposide), according to recommendations by the National Comprehensive Cancer Network guidelines and reimbursement list of the Korean National Health Insurance (NHI). The proportion of R/R PTCL patients receiving DHAP, ESHAP, or ICE in Korea was obtained from a clinician panel survey.

Input parameter and data sources

Table 1 presents model parameters and their data sources.
Table 1

Model input parameters and data sources*

ParametersBase-case valuesData source
Number of treatment cycles
 Initial treatment: pralatrexate2 cycles with a 7-week cyclePROPEL study [6]
 Initial tx.: CC4.67 cycles with a 3-week cycleClinician panel survey
 Subsequent tx.: CC4.33 cycles with a 3-week cycleClinician panel survey
Transition probability
Type of distribution used to extrapolate survival curves
 PralatrexateGeneralized gammaO’Connor et al. [7]
 CCGompertzO’Connor et al. [7]
Response rate
 Initial treatment: pralatrexatePROPEL study [6]
 CR0.126
 PR0.211
 SD0.221
 PD0.442
 Initial tx.: CCEstimation based on
 CR0.198Korean subjects [7]
 PR0.214
 SD0.032
 PD0.556
 Subsequent tx.: CCEstimation based on
 CR0.123Korean subjects [7]
 PR0.158
 SD0.035
 PD0.684
SCT rate following initial tx.0.529Clinician panel survey
SCT success rate following initial tx.0.663Kim et al. [9]
SCT rate following subsequent tx.0.458Clinician panel survey
SCT success rate following subseq. tx.0.663Kim et al. [9]
Probability of AE
 Mucositis (ICD-10 codes: K123)PROPEL study [6]
 Initial tx.: pralatrexate0.0172Crump et al. [10];
 Initial tx.: CC0.0365Jerkeman et al. [11];
 Subsequent tx.: CC0.0393Wang et al. [12];
 Thrombocytopenia (D695)Velasquez et al. [13];
 Initial tx.: pralatrexate0.0267Ezzat et al. [14];
 Initial tx.: CC0.1122Press et al. [15]
 Subsequent tx.: CC0.0839
 Anemia (D611, D630)
 Initial tx.: pralatrexate0.0118
 Initial tx.: CC0.0257
 Subsequent tx.: CC0.0279
 Neutropenia (D70)
 Initial tx.: pralatrexate0.0172
 Initial tx.: conventional chemo.0.1250
 Subsequent tx.: conventional chemo.0.1011
 Nausea/vomiting (R11)
 Initial tx.: pralatrexate0.0026
 Initial tx.: conventional chemo.0.0053
 Subsequent tx.: conventional chemo.0.0070
 Peripheral neuropathy (G900)
 Initial tx.: pralatrexate0.0000
 Initial tx.: conventional chemo.0.0063
 Subsequent tx.: conventional chemo.0.0053
Costs1 (US dollars)
 Medication cost2
 Initial tx.: pralatrexate$2465Manufacturer’s suggesting price
 Initial tx.: CC$240Maximum Payable Amount Table of
 Subseq. tx.: CC$238
Concomitant drug costKorean NHI, Clinician panel survey
 Initial tx.: pralatrexate
 First cycle, last cycle$4, $3
Initial tx.: CC$207
Subseq. tx.: CC$198
SCT cost$27,343HIRA-NPS data (2011–2016), KHSCTA, KMDP
Routine monitoring test costMaximum Payable Amount Table of
 Initial tx.: pralatrexate
 First cycle, other cycles$106, $17Korean NHI, Clinician panel survey
 Initial tx.: CC
 First cycle, other cycles$129, $40
 Subseq. tx.: CC
 First cycle, other cycles$123, $38
Costs to treat AE3

Korean NHI healthcare

statistics

 Mucositis$1288
 Thrombocytopenia$2859
 Anemia$2877
 Neutropenia$2760
 Nausea/vomiting$707
 Peripheral neuropathy$643
Utility (disutility)
 CR0.885Kang et al. [16]
 PR0.784
 SD0.746
 PD0.567
SCT success4: 45–49, 50–54, 55–59, 60–64 years old0.976, 0.971, 0.966, 0.936KNHANES (2014)
Mucositis(−0.075)Kang et al. [16]
Thrombocytopenia(−0.095)Kang et al. [16]
Anemia(−0.085)Kang et al. [16]
Neutropenia(− 0.107)Kang et al. [16]
Nausea/vomiting(− 0.059)Nafees et al. [17]
Peripheral neuropathy(−0.42)Swinburn et al. [18]

AE Adverse event; CC Conventional chemotherapy; CR Complete response; HIRA-NPS Health Insurance Review and Assessment Service-National Patients Sample; ICD-10 code International Classification of Disease code 10th edition; KHSCTA Korean Hematopoietic Stem Cell Transplantation Association; KMDP Korea Marrow Donor Program; KNHANES Korea National Health and Nutrition Examination Survey; NHI National Health Insurance; PD Progressive disease; PR Partial response; SD Stable disease; SCT Stem cell transplantation

1. All costs are presented as weekly costs in 2019 US dollars and were estimated from a societal perspective, including medical costs, transportation costs to visit health care institutions, and care giver’s costs for hospitalization. 2. Medication costs include drug costs and drug administration costs, such as costs of outpatient visits, hospitalization, medication management, aseptic preparation, and injections. 3. Since all the adverse events (AEs) included are grade 3 or higher and require hospitalization, the cost to treat each AE was measured as the average cost per hospitalization with the condition. 4. Utility during the post-SCT health states (i.e., SCT success state) was assumed to be the same as that of the general population, which is the average utility value for the general population aged 45 to 65 years obtained from 2014 KNHANES data

Comparative effectiveness Model input parameters and data sources* Korean NHI healthcare statistics AE Adverse event; CC Conventional chemotherapy; CR Complete response; HIRA-NPS Health Insurance Review and Assessment Service-National Patients Sample; ICD-10 code International Classification of Disease code 10th edition; KHSCTA Korean Hematopoietic Stem Cell Transplantation Association; KMDP Korea Marrow Donor Program; KNHANES Korea National Health and Nutrition Examination Survey; NHI National Health Insurance; PD Progressive disease; PR Partial response; SD Stable disease; SCT Stem cell transplantation 1. All costs are presented as weekly costs in 2019 US dollars and were estimated from a societal perspective, including medical costs, transportation costs to visit health care institutions, and care giver’s costs for hospitalization. 2. Medication costs include drug costs and drug administration costs, such as costs of outpatient visits, hospitalization, medication management, aseptic preparation, and injections. 3. Since all the adverse events (AEs) included are grade 3 or higher and require hospitalization, the cost to treat each AE was measured as the average cost per hospitalization with the condition. 4. Utility during the post-SCT health states (i.e., SCT success state) was assumed to be the same as that of the general population, which is the average utility value for the general population aged 45 to 65 years obtained from 2014 KNHANES data The comparative effectiveness of pralatrexate versus CC was derived from a CMCA study [7]. Patients treated with pralatrexate had a median OS of 15.24 months, while those in the control group had 4.07 months (hazard ratio (HR): 0.432, 95% confidence interval (CI): 0.298 to 0.626). Transition probabilities were derived from the CMCA study by digitizing OS rates from Kaplan-Meier curves. Since the time horizon for the cost-effectiveness analysis was greater than the duration of the CMCA study (approximately 52 months), extrapolation of survival rates was required to provide the long-term survival benefits of pralatrexate. Since access to individual patient data (IPD) was not possible, it was reconstructed from the CMCA study, so that parametric survival analysis could be conducted. The Kaplan-Meier survival curves for both treatment groups were digitized using DigitizeIt software. The method developed by Guyot et al. was applied to reconstruct IPD from the extracted coordinates of the published Kaplan-Meier survival curves using R software [19]. The estimated median OS and HR were similar to those of the CMCA study, demonstrating the validity of the reconstructed data [20]. Parametric survival analyses were conducted corresponding to guidance from the National Institute for Health and Care Excellence [21]. The proportional hazards assumption did not hold according to goodness-of-fit test (p-value < 0.05), indicating that fitting parametric models separately to each treatment arm may be preferred. Parametric survival curves were fitted to the reconstructed IPD using various distribution functions. This approach was based on the NICE technical support document 14: survival analysis for economic evaluations alongside clinical trials-extrapolation with patient-level data, which says “There are a wide range of parametric models available, and each have their own characteristics which make them suitable for different data sets. Exponential, Weibull, Gompertz, log-logistic, log normal and Generalised Gamma parametric models should all be considered.” [22]. In order to identify the most appropriate distribution function, Akaike Information Criterion (AIC) and Bayesian Information Criterion (BIC) as well as visual inspection were assessed. For the pralatrexate arm, a generalized gamma model was selected as the best fit by visual inspection, as well as the lowest AIC(434.1) and BIC(431.4) (Fig. 2). In contrast, the Gompertz model was selected as the most appropriate for the comparator group (AIC: 436.3, BIC: 433.7) (Fig. 2). Transition probabilities of death beyond the duration of the CMCA study were then calculated from survival curves in each arm.
Fig. 2

Kaplan-Meier and parametric survival curves of overall survival. (a) corresponds to patients treated with pralatrexate and (b) corresponds to patients treated with conventional chemotherapy

Costs Kaplan-Meier and parametric survival curves of overall survival. (a) corresponds to patients treated with pralatrexate and (b) corresponds to patients treated with conventional chemotherapy Costs were estimated from a societal perspective, including medical costs, transportation costs to visit healthcare institutions, and caregiver’s costs for hospitalization. All costs are presented as US dollars in 2019 value (1 USD approximately equal to 1100 Korean won).

Cost of initial treatment

Initial treatment is provided with pralatrexate or comparator drugs. For each treatment, we calculated drug costs, drug administration costs, costs to treat adverse events (AEs), and monitoring costs. The cost of the comparator arm was calculated as a weighted average based on the usage proportion of DHAP (15.3%), ESHAP (9.9%), and ICE (74.8%) obtained through clinical expert consultation. Based on the unit price, and doses recommended by the NCCN guidelines, weekly drug costs were calculated as $2279 for pralatrexate, $54 for DHAP, $64 for ESHAP, and $100 for ICE. Drug costs of essential concomitant drugs were included: oral folic acid and vitamin B12 for pralatrexate, and pegfilgrastim, pegteograstim, tripegfilgrastim, and lipegfilgrastim for comparator drugs. Drug administration costs included outpatient visits, hospitalization, medication management, aseptic preparation, and injections. Unit costs for each item were determined using the Maximum Payable Amount Table of Korean NHI. The common AEs among patients treated with pralatrexate or comparator drugs include anemia, mucositis, nausea/vomiting, neutropenia, peripheral neuropathy, and thrombocytopenia. The level of AE for all of these is grade 3 or higher, which indicates AEs requiring hospitalization [23]. Therefore, the average cost per hospitalization for each condition reported by the Korean NHI statistics was used as the cost of treatment for the AE. Probabilities of AEs in each arm were obtained from literature [6, 10–15], and applied during the initial and subsequent treatment state. Type and frequency of monitoring tests routinely performed for patients with R/R PTCL were identified by a clinician panel survey; positron emission tomography-torso; computed tomography for chest, abdomen, and neck; complete blood cell count; and general chemical tests.

Cost of subsequent treatment

In the subsequent treatment state, patients with R/R PTCL from both arms receive CC and best supportive care (BSC). Drug costs, drug administration costs, costs to treat AEs, and monitoring costs were calculated as above. Medical costs of the BSC were derived from a local study [24]. Costs of subsequent treatments were calculated as a weighted average based on the usage proportion of DHAP (33.9%), ESAHP (16.2%), ICE (45.5%), and BSC (4.4%).

Cost of SCT

From Health Insurance Review and Assessment Service-National Patients Sample (HIRA-NPS) data from 2011 to 2016, patients with PTCL, defined as those having at least one claim record with a diagnosis of PTCL (ICD-10 codes: C84.4, C84.6, C84.7, C86.0 ~ C86.3, C86.5, C86. 6, or C91.5), hospitalized for hematopoietic stem cell injection (X5131 ~ X5136) were identified. The average hospitalization cost was considered as cost per autologous SCT. Unlike autologous SCT patients using their own stem cells, allogeneic SCT patients use hematopoietic stem cells from other healthy individuals. Therefore, cost per allogenic SCT was computed as cost per autologous SCT plus cost of obtaining matched hematopoietic stem cells, estimated using the data from the Korean Hematopoietic Stem Cell Transplantation Association and the Korea Marrow Donor Program. Using the proportion of autologous and allogeneic SCT performed among patients with PTCL in HIRA-NPS data from 2011 to 2016, the weighted average cost of SCT among patients with PTCL was calculated. Quality of life Utility values for each health state and disutility values for AEs were obtained from a local study [16] and foreign literature [17, 18]. Utility decrement due to AEs was applied during the initial and subsequent treatment state. Utility during the SCT success state was assumed to be the same as that of the general population aged 45 to 65 years [25].

Data analysis

During the modeled simulation of 15 years from the beginning at the “initial treatment” state, the average cost that a patient with R/R PTCL treated with pralatrexate or CC would have, was calculated for each Markov cycle by multiplying the probability of transition to each of the five health states during the cycle and their corresponding costs, and calculating the sum of the costs of all five health states. Then, we calculated the sum of the average costs of all Markov cycles (i.e., from the first cycle (1st week) through the last cycle (782nd week (=365 days/7 days × 15 years) of the Markov model) for each treatment arm, considering them as the expected costs that a patient with R/R PTCL would have for 15 years from the start of the simulation. The expected treatment effectiveness, defined as life-years (LYs) or quality-adjusted life-years (QALYs) gained as a result of treatment with pralatrexate or CC, was estimated in the same manner as the costs. For each Markov cycle, the average LYs were calculated as a product of the “probability of transition to each of the five health states during the cycle” and “1/52.1 or 0 LYs (= “1 week/52.1 weeks” if alive or “0 week/52.1 weeks” if dead).” Detailed explanations for how the expected costs and treatment effectiveness were computed as a result of the modeled simulation are presented in Additional file 1. Incremental cost-effectiveness ratios (ICERs) were computed for the base case by dividing the incremental costs associated with providing pralatrexate therapy versus CC (i.e. the expected costs of pralatrexate arm less the expected costs of CC arm) by incremental effectiveness measured in LYs and QALYs gained, respectively. An annual discounted rate of 5% was used for both cost and effectiveness. One-way sensitivity analyses were conducted to confirm the robustness of the ICER of the base case. The impact of the uncertainty in the extrapolation of the OS benefit of pralatrexate beyond the observation period of the CMCA was examined by applying different distribution functions. For utility for the health states of CR, PR, SD, and PD, upper and lower values of 95% CI [16] were used to re-calculate the ICER. The success rate of SCT was varied by 10% from the base case. Assuming that dose intensity is correlated with survival gain in lymphoma [26], a 20% decrease was applied to the dose of comparator drugs due to AEs, and the corresponding costs were adjusted accordingly. Based on the time horizon used in the earlier studies, the time horizon of the modelled simulation was varied to 10 and 30 years.

Results

In the base-case analysis, the expected cost per patient for 15 years in the simulation was $48,677 in the pralatrexate arm and $20,045 in the comparator arm, resulting in an incremental cost of $28,632. Patients in the pralatrexate arm incurred more initial treatment drug costs ($30,301), subsequent treatment costs (treatment drugs: $1033, concomitant drugs: $860, and monitoring tests: $179), and SCT costs ($1953) than patients in the comparator arm. Higher costs associated with subsequent treatment and SCT were due to improved OS in the pralatrexate arm. The incremental LYs and QALYs of patients in the pralatrexate arm compared with those in the comparator arm were 1.567 years (3.499 vs. 1.932 years) and 0.731 QALYs (1.075 vs. 0.344 QALYs), respectively. As a result, the ICER is estimated to be $18,276 per LY gained and $39,153 per QALY gained (Table 2).
Table 2

Base-case analysis results for cost-effectiveness of pralatrexate versus conventional chemotherapy in treating R/R PTCL1

PralatrexateConventional chemotherapyIncremental value (pralatrexate vs. coven. Chemo.)
Total costs ($)48,67720,04528,632
 Initial treatment cost32,804250430,301
 Concomitant drug cost (initial tx.)452167-2122
 Subsequent treatment cost18428101033
 Concomitant drug cost (subseq. tx.)1533674860
 Monitoring test cost (initial tx.)273461− 188
 Monitoring test cost (subseq. tx)322143179
 Cost to treat AE717010,554− 3383
 SCT cost468627331953
Life years (LYs)3.4991.9321.567
Quality-adjusted life years (QALYs)1.0750.3440.731
Incremental cost per LY gained18,276
Incremental cost per QALY gained39,153

AE Adverse event; PTCL Peripheral T-cell lymphoma; R/R Relapsed or refractory; SCT Stem cell transplantation

1. All costs are presented as US dollars in 2019 value

Base-case analysis results for cost-effectiveness of pralatrexate versus conventional chemotherapy in treating R/R PTCL1 AE Adverse event; PTCL Peripheral T-cell lymphoma; R/R Relapsed or refractory; SCT Stem cell transplantation 1. All costs are presented as US dollars in 2019 value Figure 3 presents the results of one-way sensitivity analysis. Overall, the ICER ranged from $33,949 to $51,846 per QALY gained. It remained within twice the per-capita gross domestic product (GDP, approximately $27,000) of Korea, which is an implicit willingness-to-pay (WTP) threshold of anticancer drugs to accept health benefit of one QALY gained in Korea. While the type of distribution function used to extrapolate survival curves was the most influential variable, resulting in a wide ICER range, the re-calculated ICERs remained within twice the GDP value. Therefore, we conclude that the base-case analysis result is robust to uncertainties of the model parameters.
Fig. 3

Tornado diagram for sensitivity analysis results. CR, complete remission; ICER, incremental cost-effectiveness ratio; PR, partial remission; SCT, stem cell transplantation; SD, stable disease; OS, overall survival; PD, progressive disease; USD, US dollars

Tornado diagram for sensitivity analysis results. CR, complete remission; ICER, incremental cost-effectiveness ratio; PR, partial remission; SCT, stem cell transplantation; SD, stable disease; OS, overall survival; PD, progressive disease; USD, US dollars

Discussion

Although pralatrexate proved its efficacy in the PROPEL study and received accelerated approval by the US Food and Drug Administration in 2009, there has been difficulty in obtaining reimbursement decisions by many other regulatory authorities due to the lack of comparative effectiveness data. Since the PROPEL study was a single arm study, it was not able to provide the merits of pralatrexate in comparison with conventional standards. To overcome this limitation, a CMCA of the PROPEL study population (80 patients) was conducted using OS data of propensity-score-matched historical controls (80 patients) from four academic groups on three continents [7]. Although a CMCA is not superior to randomized controlled trials (RCTs) in assessing the clinical benefits of a drug, propensity score matching allows an observational (non-randomized) study to mimic an RCT by making observed baseline covariates similar between the case and control groups [27, 28]. The provision of comparative effectiveness evidence of pralatrexate vs. CC enabled us to assess the relative economic value of pralatrexate. Currently, pralatrexate is the only available monotherapy for patients with R/R PTCL. To the best of our knowledge, this is the first cost-effectiveness study of pralatrexate. The ICER for pralatrexate compared with CC yielded $39,153 per QALY gained, which is within the cost-effective threshold of Korea. Robust deterministic sensitivity analysis results confirmed that uncertainties of model parameters did not alter the cost-effective merit of pralatrexate. Several assumptions and study limitations would over- or under-estimate the ICER. First, the success rate of SCT obtained from local literature [9] was based on the one-year survival rate, thus, only LY and QALY gain for those surviving for at least 1 year following SCT were reflected in our analysis. Those who survived for less than 1 year were not considered in the analysis. This results in underestimation of the clinical benefit of the improved OS of pralatrexate and, consequently, overestimation of the ICER. Second, we assumed that patients moving to the SCT success state have the same mortality rate and quality of life as the general population. This assumption excludes the possibility of recurrence or metastasis of cancer, leading to overestimation of the clinical benefits of pralatrexate and, consequently, underestimation of the ICER. Third, due to the lack of data for rare diseases, including R/R PTCL, it was not easy to find relevant data sources for model parameters. Therefore, we often depended on local clinician consultation. This could threaten the validity of our study results. However, the six clinicians who participated in the expert panel are highly representative as they treat most Korean R/R patients. Nevertheless, this study has the strength of best utilizing local data. We incorporated real-world evidence in the modelled simulation by reflecting treatment patterns for patients with R/R PTCL based on the representative clinical expert’s consultation. All cost data were derived from various local sources, such as local unit cost, clinician panel survey, NHI statistics, and local patient dataset. Likewise, this study utilized local utility values for health states included in the model.

Conclusions

Pralatrexate is a cost-effective intervention as it has a significant clinical benefit of improved OS and requires incremental costs within the WTP limit. We anticipate that pralatrexate could be a new therapeutic option for patients with life-threatening R/R PTCL. Additional file 1.
  20 in total

1.  Lymphoma incidence patterns by WHO subtype in the United States, 1992-2001.

Authors:  Lindsay M Morton; Sophia S Wang; Susan S Devesa; Patricia Hartge; Dennis D Weisenburger; Martha S Linet
Journal:  Blood       Date:  2005-09-08       Impact factor: 22.113

Review 2.  Importance of relative dose intensity in chemotherapy for diffuse large B-cell lymphoma.

Authors:  Hiroki Yamaguchi; Tsuneaki Hirakawa; Koiti Inokuchi
Journal:  J Clin Exp Hematop       Date:  2011

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Journal:  J Clin Oncol       Date:  2014-09-29       Impact factor: 44.544

4.  Propensity Score Methods for Analyzing Observational Data Like Randomized Experiments: Challenges and Solutions for Rare Outcomes and Exposures.

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Journal:  Am J Epidemiol       Date:  2015-05-20       Impact factor: 4.897

5.  Health utilities in relation to treatment response and adverse events in relapsed/refractory Hodgkin lymphoma and systemic anaplastic large cell lymphoma.

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Journal:  Leuk Lymphoma       Date:  2014-11-03

6.  ESHAP as salvage therapy for refractory non-Hodgkin's lymphoma: Taiwan experience.

Authors:  W S Wang; T J Chiou; J H Liu; F S Fan; C C Yen; S L Tung; P M Chen
Journal:  Jpn J Clin Oncol       Date:  1999-01       Impact factor: 3.019

7.  ICE (ifosfamide, carboplatin, etoposide) as second-line chemotherapy in relapsed or primary progressive aggressive lymphoma--the Nordic Lymphoma Group experience.

Authors:  M Jerkeman; S Leppä; S Kvaløy; H Holte
Journal:  Eur J Haematol       Date:  2004-09       Impact factor: 2.997

8.  Enhanced secondary analysis of survival data: reconstructing the data from published Kaplan-Meier survival curves.

Authors:  Patricia Guyot; A E Ades; Mario J N M Ouwens; Nicky J Welton
Journal:  BMC Med Res Methodol       Date:  2012-02-01       Impact factor: 4.615

9.  The use of propensity score methods with survival or time-to-event outcomes: reporting measures of effect similar to those used in randomized experiments.

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Journal:  Stat Med       Date:  2013-09-30       Impact factor: 2.373

10.  The outcome of peripheral T-cell lymphoma patients failing first-line therapy: a report from the prospective, International T-Cell Project.

Authors:  Monica Bellei; Francine M Foss; Andrei R Shustov; Steven M Horwitz; Luigi Marcheselli; Won Seog Kim; Maria E Cabrera; Ivan Dlouhy; Arnon Nagler; Ranjana H Advani; Emanuela A Pesce; Young-Hyeh Ko; Virginia Martinez; Silvia Montoto; Carlos Chiattone; Alison Moskowitz; Michele Spina; Irene Biasoli; Martina Manni; Massimo Federico
Journal:  Haematologica       Date:  2018-03-29       Impact factor: 9.941

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1.  Cost-effectiveness analysis of personalised versus standard dosimetry for selective internal radiation therapy with TheraSphere in patients with hepatocellular carcinoma.

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