Literature DB >> 19142182

Economic evaluation of chemoprevention of breast cancer with tamoxifen and raloxifene among high-risk women in Japan.

M Kondo1, S-L Hoshi, M Toi.   

Abstract

Raloxifene was approved for chemoprevention against breast cancer among high-risk women in addition to tamoxifen by the US Food and Drug Administration. This study aims to evaluate cost-effectiveness of these agents under Japan's health system. A cost-effectiveness analysis with Markov model consisting of eight health states such as healthy, invasive breast cancer, and endometrial cancer is carried out. The model incorporated the findings of National Surgical Adjuvant Breast and Bowel Project P-1 and P-2 trial, and key costs obtained from health insurance claim reviews. Favourable results, that is cost saving or cost-effective, are found by both tamoxifen and raloxifene for the introduction of chemoprevention among extremely high-risk women such as having a history of atypical hyperplasia, a history of lobular carcinoma in situ or a 5-year predicted breast cancer risk of > or =5.01% starting at younger age, whereas unfavourable results, that is 'cost more and gain less' or cost-ineffective, are found for women with a 5-year predicted breast cancer risk of < or =5.00%. Therapeutic policy switch from tamoxifen to raloxifene among postmenopausal women are implied cost-effective. Findings suggest that introduction of chemoprevention targeting extremely high-risk women in Japan can be justifiable as an efficient use of finite health-care resources, possibly contributing to cost containment.

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Year:  2009        PMID: 19142182      PMCID: PMC2634700          DOI: 10.1038/sj.bjc.6604869

Source DB:  PubMed          Journal:  Br J Cancer        ISSN: 0007-0920            Impact factor:   7.640


Several clinical trials have demonstrated the effectiveness of prophylactic administration of selective oestrogen receptor modulators (SERMs) such as tamoxifen (Fisher ; Cuzick ; Powles ; Veronesi ) and raloxifene (Cauley ; Martino ; Vogel ) in reducing incidence of breast cancer among women at high risk of developing the disease. Tamoxifen was approved for prophylaxis by the US Food and Drug Administration in 1998, and raloxifene was also approved for postmenopausal women in 2007. Tamoxifen reduces the risk of breast cancer whereas increasing the risk of adverse events such as endometrial cancer and pulmonary embolism. Raloxifene is a second-generation SERM usually used for osteoporosis treatment, and it reduces the risk of invasive breast cancer with a lower risk of known adverse events associated with SERMs, compared to tamoxifen. This is because raloxifene does not induce the unwanted stimulation of endometrium (Delmas ). Therefore, raloxifene is considered to have a better clinical property as prophylactic agent, although it is inferior to tamoxifen in preventing noninvasive breast cancer. More women at high risk of developing breast cancer are expected to take raloxifene as their breast cancer prevention drug in the United States (Bevers, 2007). However, both of these agents have been neither approved nor made available for its use as breast cancer prevention in Japan, although experts have shown their expectations (Iwata and Saeki, 2006). It is said that there are five hurdles to overcome in addressing intervention in the diffusion process of new drug: quality, safety, efficacy, cost-effectiveness, and affordability (Trueman ). This paper aims to present evidence to the fourth hurdle, cost-effectiveness of both agents, under Japan's health system. Although cost-effectiveness of prophylactic use of tamoxifen has been reported from the USA (Noe ; Grann ; Smith and Hillner, 2000; Hershman ; Melnikow ) and Australia (Eckermann ), that of raloxifene has not been published to date except as a part of economic evaluation of osteoporosis management (Armstrong ; Kanis ). This paper also simulates a therapeutic policy switch from tamoxifen to raloxifene among postmenopausal women to illustrate the relative value of raloxifene. Consequently, it should have implications to the developed countries where chemoprevention with tamoxifen is already in practise.

Methods

We conduct a cost-effectiveness analysis with Markov modelling based on the findings of the National Surgical Adjuvant Breast and Bowel Project (NSABP) P-1 trial (Fisher ), the NSABP P-2 trial (Vogel ), and the literature on costing under Japan's health system including sensitivity analyses from societal perspective. Although longer follow-up results for tamoxifen are reported from the first International Breast Cancer Intervention Study (IBIS-I; Cuzick ) and the Royal Marsden trial (Powles ), NSABP P-1 trial with a shorter follow-up period is chosen as clinical evidence for our modelling to make clear comparisons with NSABP P-2 trial of raloxifene. The long-term outcomes for tamoxifen (Veronesi ) are considered in our sensitivity analyses. We use TreeAge Pro 2008 (TreeAge Software Inc.) for our economic modelling.

High-risk women

We model high-risk women according to the risk classifications featured in the report of clinical trials: three levels (⩾1.66, 3.01–5.00%, ⩾5.01%) of a 5-year predicted breast cancer risk, with a history of lobular carcinoma in situ (LCIS), and with a history of atypical hyperplasia (AH). A 5-year predicted breast cancer risk of an individual woman used in the trials is based on Gail et al model 2 (Gail and Costantino, 2001), which is validated for white women (Rockhill ) and African American women (Gail ), to date. We assume the same model is good for Japanese women. We also model the ages of starting prophylaxis: 35, 50, 60 years old for tamoxifen, and 50, 60 years old for raloxifene taking the menopause into account.

Markov model

We construct a Markov model of courses followed by high-risk women, which is shown in Figure 1. Eight health states are modelled according to clinical events monitored and found significant in P-1 trial and P-2 trial: (1) healthy; (2) invasive breast cancer; (3) noninvasive breast cancer, (4) endometrial cancer; (5) pulmonary embolism; (6) cataract; (7) hip fracture; and (8) dead. Healthy women at high risk of the disease, women with invasive and noninvasive breast cancer are the target health states for chemoprevention. An increase in risk of endometrial cancer, pulmonary embolism, and cataract are known as adverse effects of SERMs, whereas a decrease in risk of hip fracture is known as a beneficial effect. Transitions between health states are indicated with arrows.
Figure 1

Markov model.

The time span of each stage is set at 1 year, since trials report annual incidence rates. Markov process is repeated until death or age 100, whichever comes first, since all events are expected to occur within this time horizon. Women who survive after the age of 100 years are assumed to die regardless of breast cancer development.

Chemoprevention

Prophylaxis with SERMs is continued for 5 years, or discontinued in case of adverse events, which is similar to the regimen employed in clinical trials.

Comparisons

We compare outcomes and costs in terms of incremental cost-effectiveness ratios (ICERs) between status quo in Japan, without prophylaxis, and hypothetical practise, with prophylaxis, by the agent (tamoxifen and raloxifene), the risk classification, and the age of starting prophylaxis. We also compare prophylaxis with tamoxifen and prophylaxis with raloxifene to estimate the relative value of raloxifene to tamoxifen, although this does not depict any marginal change in Japan.

Outcome estimation

Outcomes in terms of life years gained (LYGs) and quality adjusted life years (QALYs) are estimated by assigning transitional probabilities and utility weights to Markov model from the literature. Transitional probabilities from healthy state to disease states in Markov model are shown in Table 1 according to the findings from the clinical trials. Risk reduction effect of SERMs is assumed to continue during the 5-year course of prophylaxis.
Table 1

Transitional probabilities from healthy state to disease states in Markov model

  Placebo
Tamoxifen
Raloxifene
  Base-case value Source Base-case value Range tested in sensitivity analysisa Source Base-case value Range tested in sensitivity analysisa Source
Invasive breast cancer
 Five-year predicted breast cancer risk ⩾1.66%
  Age of starting prophylaxis
   350.00632 Fisher et al (2005) 0.004040.00235–0.00641 Fisher et al (2005)    
   500.00587 Fisher et al (2005) 0.003330.00168–0.00573 Fisher et al (2005) 0.003100.00184–0.00490Fisher et al (2005), Vogel et al (2006)
   600.00668 Fisher et al (2005) 0.003300.00165–0.00567 Fisher et al (2005) 0.003660.00213–0.00585Fisher et al (2005), Vogel et al (2006)
 Five-year predicted breast cancer risk 3.01–5.00%0.00451 Fisher et al (2005) 0.002700.00108–0.00534 Fisher et al (2005) 0.002030.00101–0.00349Fisher et al (2005), Vogel et al (2006)
 Five-year predicted breast cancer risk ⩾5.01%0.01198 Fisher et al (2005) 0.005150.00245–0.00893 Fisher et al (2005) 0.005610.00323–0.00894Fisher et al (2005), Vogel et al (2006)
 History of lobular carcinoma in situ0.01170 Fisher et al (2005) 0.006270.00161–0.01476 Fisher et al (2005) 0.006140.00239–0.01226Fisher et al (2005), Vogel et al (2006)
 History of atypical hyperplasia0.01042 Fisher et al (2005) 0.002550.00029–0.00686 Fisher et al (2005) 0.002860.00133–0.00523Fisher et al (2005), Vogel et al (2006)
Noninvasive breast cancer0.00012 Fisher et al (2005) 0.000040.00000–0.00652 Fisher et al (2005) 0.000060.00003–0.00009Fisher et al (2005, Vogel et al (2006)
         
Endometrial cancer
 Age of starting prophylaxis
  350.00082 Fisher et al (2005) 0.001160.00010–0.00410 Fisher et al (2005)    
  50 and 600.00058 Fisher et al (2005) 0.003080.00061–0.00992 Fisher et al (2005) 0.001940.00065–0.00403Fisher et al (2005), Vogel et al (2006)
         
Pulmonary embolism
 Age of starting prophylaxis
  350.00013 Fisher et al (2005) 0.000250.00000–0.00420 Fisher et al (2005)    
  50 and 600.00044 Fisher et al (2005) 0.000960.00020–0.00275 Fisher et al (2005) 0.000610.00028–0.00114Fisher et al (2005), Vogel et al (2006)
 Cataract0.02285 Fisher et al (2005) 0.027750.02384–0.03206 Fisher et al (2005) 0.021920.01735–0.02734Fisher et al (2005), Vogel et al (2006)
 Hip fracture0.00086 Fisher et al (2005) 0.000590.00022–0.00122 Fisher et al (2005) 0.000520.00016–0.00115Fisher et al (2005), Vogel et al (2006)

1.5 times of 95% confidence interval.

Table 2 summarises other assumptions such as transitional probabilities from disease states to dead state and utility weights used in Markov model. The share of clinical stages of invasive breast cancer at diagnosis are adopted from a nationwide survey on breast cancer screening (Japan Cancer Society, 2007), of which prognosis is calculated from corresponding follow-up cases at Tokyo Metropolitan Cancer and Infectious Disease Centre Komagome Hospital. The prognosis of endometrial cancer is also adopted from a nationwide cancer registry (Japanese Society of Obstetrics and Gynecology, 2000). The prognosis of pulmonary embolism and hip fracture are taken from Sakuma ; Kitamura , respectively. Japanese female population mortality rates from Vital Statistics (Ministry of Health, Labour and Welfare, 2005a) are applied for other transitions to dead state.
Table 2

Assumptions used in Markov model

  Assumption Range tested in sensitivity analysis Source
Transitional probabilities from disease states to dead state
 Invasive breast cancer0–9 years after diagnosis: prognosis of Japanese breast cancer patients by the stageChange by±50%Calculated from follow-up patients at Komagome Hospital
  Stage I: 0.0074, 0.0155, 0.0113, 0.0218, 0.0254, 0.0248, 0.0289, 0.0165, 0.01632  
  Stage II: 0.0054, 0.0474, 0.0570, 0.0334, 0.0398, 0.0321, 0.0275, 0.0295, 0.04672  
  (Proportions of stage at diagnosis are assumed stage I as 72% and stage II as 28%)Change by±50% Japan Cancer Society (2007)
 Thereafter: Japanese female population mortality ratesChange by±50% Ministry of Health, Labour and Welfare (2005a)
 Noninvasive breast cancerJapanese female population mortality ratesChange by±50% Ministry of Health, Labour and Welfare (2005a)
 Endometrial cancer0–4 years after diagnosis: prognosis of Japanese endometrial cancer patients 0.0660, 0.0546, 0.0328, 0.02813Change by±50% Japanese Society of Obstetrics and Gynecology (2000)
 Thereafter: Japanese female population mortality ratesChange by±50% Ministry of Health, Labour and Welfare (2005a)
 Pulmonary embolism0 year after diagnosis: 0.08Change by±50% Sakuma et al (2004)
 Thereafter: Japanese female population mortality ratesChange by±50% Ministry of Health, Labour and Welfare (2005a)
 CataractsJapanese female population mortality ratesChange by±50% Ministry of Health, Labour and Welfare (2005a)
 Hip fracture0–1 years after diagnosis: 0.11 and 0.19, respectivelyChange by±50% Kitamura et al (1998)
 Thereafter: Japanese female population mortality ratesChange by±50% Ministry of Health, Labour and Welfare (2005a)
    
Utility weights    
 Healthy1.00Change by±20% 
  Healthy under chemoprevention for 5 years0.99Change by±20%Smith and Hillner (1993), Hillner et al (1993), Naeim and Keeler (2005)
 Invasive breast caner0 year after diagnosis: 0.87, thereafter: 0.89Change by±20%de Koning et al (1991), Grann et al (1998)
 Noninvasive breast cancer0.98Change by±20% Earle et al (2000)
 Endometrial cancer0 year after diagnosis: 0.83, thereafter: 0.88Change by±20%Armstrong et al (2001), Cykert et al (2004)
 Pulmonary embolism0.70Change by±20% Chau et al (2003)
 Cataract surgery0.96Change by±20% Ruof et al (2005)
 Hip fracture0–1 years after diagnosis: 0.61 and 0.92, respectivelyChange by±20% Armstrong et al (2001)
It is more preferable to adopt utility weights from a consistent study that assesses our six disease states in Japan, but there is no Japanese utility weight in the literature to date, which may be applied to any health states in our model. To illustrate the typical patient states, we adopt the weights assessed in developed countries considering them as the best available knowledge, and choosing them under the consensus of staff doctors at Tokyo Metropolitan Cancer and Infectious Disease Centre Komagome Hospital (de Koning ; Hillner ; Smith and Hillner, 1993; Grann ; Earle ; Armstrong ; Chau ; Cykert ; Naeim and Keeler, 2005; Ruof ). Outcome is discounted at a rate of 3%.

Costing

From societal perspective, costing should cover the opportunity cost borne by various economic entities in the society. In the context of this study, costs borne by women or third party payers including the government and social insurers are considered, although there is no particular assumption about who bears the cost of chemoprevention. According to the national medical care fee schedule, the amount of direct payments to health-care providers is estimated as cost, whereas costs to sectors other than health and productivity losses are left uncounted. Health states are identified as cost items in Markov model. Table 3 summarises the cost of each health states. Being in healthy state, women with chemoprevention take 20 mg per day, ¥82.6 (£0.41; £1=¥200), of tamoxifen, or 60 mg per day, ¥148.5 (£0.74), of raloxifene, prescribed regularly for 5 years, and annual mammography checkup. Women without chemoprevention also undergo annual mammography checkup. Although the state is labelled as ‘healthy’, it includes all other diseases that are not modelled in Markov model. Annual treatment costs by the age stratum are approximated by annual health-care expenditure per woman adopted from National Health-Care Expenditure (Ministry of Health, Labour and Welfare, 2005b). As it is well known that the cost of health care in the last year of life tends to be large, these are shown separately after an adjustment based on Fukawa (1998).
Table 3

Costs (¥)

  Healthy
Breast cancer
  Base-case value Range tested in sensitivity analysis Source Base-case value Range tested in sensitivity analysis Source
Chemoprevention       
 Tamoxifen30 149Change by±50%Drug price list, etc   
 Raloxifene54 203Change by±50%    
 Prescription+annual mammography44 980Change by±50%    
 Annual mammography15 520Change by±50%    
       
Ages 35–49       
 First year after diagnosis   1978 064Change by±50% 
 Yearly cost   383 743Change by±50% 
  Ages 35–3981 937Change by±50%    
  Ages 40–4494 529Change by±50%Ministry of Health, Labour and Welfare (2005b), Fukawa (1998)  Insurance claim review
  Ages 45–49110 604Change by±50%    
 Terminal care cost, last year of life   5495 224Change by±50% 
  Ages 35–39352 331Change by±50%    
  Ages 40–44406 474Change by±50%    
  Ages 45–49475 599Change by±50%  Change by±50% 
       
Ages 50–64       
 First year after diagnosis   2211 083Change by±50% 
 Yearly cost   542 857Change by±50% 
  Ages 50–54151 625Change by±50%Ministry of Health, Labour and Welfare (2005b), Fukawa (1998)  Insurance claim review
  Ages 55–59195 085Change by±50%    
  Ages 60–64258 723Change by±50%    
 Terminal care cost, last year of life   4106 271Change by±50% 
  Ages 50–54651 986Change by±50%    
  Ages 55–59838 866Change by±50%    
  Ages 60–641112 510Change by±50%    
       
Ages 65–79       
 First year after diagnosis   1530 259Change by±50% 
 Yearly cost   441 458Change by±50% 
  Ages 65–69324 347Change by±50%    
  Ages 70–74460 617Change by±50%Ministry of Health, Labour and Welfare (2005b), Fukawa (1998)  Insurance claim review
  Ages 75–79549 284Change by±50%    
 Terminal care cost, last year of life   3252 302Change by±50% 
  Ages 65–691394 690Change by±50%    
  Ages 70–741980 653Change by±50%    
  Ages 75–792361 923Change by±50%    
       
Ages 80+       
 First year after diagnosis  Ministry of Health, Labour and Welfare (2005b), Fukawa (1998)961 181Change by±50%Insurance claim review
 Yearly cost   185 151Change by±50% 
  Ages 80–84576 290Change by±50%    
  Ages 85–89647 941Change by±50%    
  Ages 90–94557 429Change by±50%    
  Ages 95–100465 059Change by±50%    
 Terminal care cost, last year of life   427 042Change by±50% 
  Ages 80–842478 049Change by±50%    
  Ages 85–892786 147Change by±50%    
  Ages 90–942396 943Change by±50%    
  Ages 95–1001999 754Change by±50%    
  Diseases
  Base-case value   Range tested in sensitivity analysis   Source  
Noninvasive breast cancer surgery, etc (DPC0900103x020xxx+ reimbursements by FFS) 847 928 Change by±50%  Matsuda and Ishikawa (2003)  
       
Endometrial cancer       
Total hysterectomy, etc (DPC 1200203x01x0xx+ reimbursements by FFS)1183 839 Change by±50%  Matsuda and Ishikawa (2003)  
Pulmonary embolism       
 Total469 890     
 (Diagnosis)(52 350) Change by±50%  Fuji et al (2005)  
 (Treatment)(417 540)     
       
Cataract       
 Surgery, etc (DPC 0201103x01x 000+reimbursements by FFS)309 120 Change by±50%  Matsuda and Ishikawa (2003)  
Hip fracture       
 Surgery, etc (DPC 1608003x02xx0x+ reimbursements by FFS)1553 195 Change by±50%  Matsuda and Ishikawa (2003)  

DPC: diagnosis procedure combination; FFS: fee for service.

Table 3 also summarises the treatment cost of invasive breast cancer by the age stratum. In the case of cancer care, the cost in the first year after diagnosis tends to be large as well as in the last year of life, so here again, the costs are shown separately. These figures are obtained from insurance claim reviews at Tokyo Metropolitan Cancer and Infectious Disease Centre Komagome Hospital. As to the cost of the first year, recent breast cancer cases of stage I and stage II that have undergone initial treatment with a follow-up of 1 year are retrospectively selected so that each age strata has 40 cases. As to the yearly cost of the second year and thereafter, 40 cases for each age strata are randomly selected from follow-up cases initially diagnosed as stage I and stage II. As to the cost of the last year of life, recent 80 fatal cases are retrospectively selected, as the number of these is relatively limited. Insurance claims of these total of 400 cases for 1 year are reviewed to calculate average annual costs by the age strata. Then an adjustment is made to include the cost of prescription to be filled at external pharmacies, such as in the case of adjuvant hormonal therapy, which is based on the consensus among staff doctors. Costs of disease states are summarised in Table 3 as well. Treatment costs of noninvasive breast cancer, endometrial cancer, cataract, and hip fractures are adopted from a background study for the development of Japanese prospective payment system to health-care providers, diagnosis procedure combination (Matsuda and Ishikawa, 2003), whereas treatment cost of pulmonary embolism is adopted from Fuji . Costs are also discounted at a rate of 3%.

Sensitivity analyses

To deal with the uncertainty of probabilities, utility weights, and costs used in our economic model, one-way sensitivity analyses are performed. Transitional probabilities from healthy state to disease states shown in Table 1 are varied in 1.5 times of 95% confidence intervals (CI) reported from the clinical trials. 95% CI is often used for similar exercises of sensitivity analyses, but we set wider range for the applicability of the clinical trial data to Japanese women. The other probabilities shown in Table 2 are changed by ±50%. Utility weights are changed by ±20%, and we think this could cover the difference between the utility weights of Japanese women and those of the other developed nations. Costs shown in Table 3 are changed by ±50%. Discount rate is also changed from 0 to 6%. Acknowledging the long-term outcomes for tamoxifen in the IBIS-I trial (Cuzick ) and the Royal Marsden trial (Powles ), risk reduction effect of tamoxifen is prolonged from 5 to 10 and 15 years without any risk increase of adverse events after the completion of prophylaxis.

Results

Outcomes

Table 4 shows the results of cost-effectiveness analysis comparing prophylaxis with no prophylaxis.
Table 4

Results of cost-effectiveness analysis (1)

  CoCost (¥)
Effectiveness (LYGs)
Effectiveness (QALYs)
Incremental cost- effectiveness ratio
No prophylaxis vs prophylaxis with tamoxifen No prophylaxis Tamoxifen Incremental No prophylaxis Tamoxifen Incremental No prophylaxis Tamoxifen Incremental (¥/LYG) (¥/QALY)
Five-year predicted breast cancer risk ⩾1.66%
 Starting at age 3513 958 67913 983 62624 94725.91625.9530.03725.75725.7590.002678 21014 247 447
 Starting at age 5017 630 81417 751 353120 53822.16822.167−0.00122.04022.000−0.040Cost more, gain lessCost more, gain less
 Starting at age 6020 160 90620 324 294163 38818.80618.8070.00118.68818.654−0.034120 849 008Cost more, gain less
            
Five-year predicted breast cancer risk 3.01–5.00%
 Starting at age 3513 627 47213 685 36857 89626.00526.0350.03025.87925.872−0.0071 946 092Cost more, gain less
 Starting at age 5017 579 40717 732 900153 49322.19522.185−0.01022.08822.037−0.051Cost more, gain lessCost more, gain less
 Starting at age 6020 251 93720 444 141192 20318.80818.797−0.01118.71818.666−0.052Cost more, gain lessCost more, gain less
            
Five-year predicted breast cancer risk ⩾5.01%
 Starting at age 3514 956 34914 667 969−288 38025.65125.7550.10525.39625.4800.084Cost less, gain moreCost less, gain more
 Starting at age 5017 867 14617 800 766−66 37922.04922.0960.04721.83221.8540.022Cost less, gain moreCost less, gain more
 Starting at age 6019 958 43320 058 02099 85718.79718.8250.02818.61418.6180.0043548 04926 648 821
            
History of lobular carcinoma in situ
 Starting at age 3514 908 31414 717 649−190 66525.66325.7470.08325.41425.4720.058Cost less, gain moreCost less, gain more
 Starting at age 5017 856 15817 850 722−5 38622.05422.0850.03121.84121.8430.002Cost less, gain moreCost less, gain more
 Starting at age 6019 968 46620 093 211124 74518.79818.8150.01718.61818.606−0.0117282 700Cost more, gain less
            
History of atypical hyperplasia
 Starting at age 3514 687 00314 319 102−367 90125.72225.8440.12225.49325.5980.105Cost less, gain moreCost less, gain more
 Starting at age 5017 806 09517 692 020−114 07522.07922.1390.06021.88421.9220.038Cost less, gain moreCost less, gain more
 Starting at age 6020 015 24320 096 73181 48818.80018.8370.03718.63518.6510.0162226 6845234 647a
            
            
No prophylaxis vs prophylaxis with raloxifene No prophylaxis Raloxifene Incremental No prophylaxis Raloxifene Incremental No prophylaxis Raloxifene Incremental (¥/LYG) (¥/QALY)
Five-year predicted breast cancer risk ⩾1.66%
 Starting at age 5017 630 81417 833 020202 20622.16822.1900.02222.04022.027−0.0139256 382Cost more, gain less
 Starting at age 6020 160 90620 427 386266 48018.80618.8220.01618.68818.670−0.01816 806 286Cost more, gain less
            
Five-year predicted breast cancer risk 3.01–5.00%
 Starting at age 5017 579 40717 794 890215 48222.19522.2140.01922.08822.071−0.01711 599 422Cost more, gain less
 Starting at age 6020 251 93720 529 452277 51518.80818.8200.01218.71818.694−0.02423 845 594Cost more, gain less
            
Five-year predicted breast cancer risk ⩾5.01%
 Starting at age 5017 867 14617 911 19844 05322.04922.1110.06221.83221.8710.039705 1261123 880a
 Starting at age 6019 958 43320 161 888203 45518.79718.8390.04218.61418.6330.0194848 67710 664 954
            
History of lobular carcinoma in situ
 Starting at age 5017 856 15817 935 69779 54022.05422.1070.05321.84121.8690.0271496 4252904 386a
 Starting at age 6019 968 46620 186 549218 08318.79818.8330.03618.61818.6280.0106133 16721462 765
            
History of atypical hyperplasia
 Starting at age 5017 806 09517 795 708−10 38722.07922.1560.07721.88421.9420.058Cost less, gain moreCost less, gain more
 Starting at age 6020 015 24320 198 328183 08518.80018.8520.05218.63518.6680.0333527 4535570 154a

Cost-effective when compared to a suggested criterion in Japan (Ohkusa, 2003) of ¥6000  000 for one QALY gain.

In the comparison between prophylaxis with tamoxifen vs no prophylaxis, most outcomes in terms of LYGs are increased by chemoprevention except for women with a 5-year predicted breast cancer risk of ⩾1.66% starting at age 50, and women with a 5-year predicted breast cancer risk of 3.01–5.00% starting at age 50 and 60. Outcomes in terms of QALYs are also increased except for women with a 5-year predicted breast cancer risk of ⩾1.66% starting at age 50 and 60, women with a 5-year predicted breast cancer risk of 3.01–5.00%, and women with a history of LCIS starting at age 60. The largest outcome gain in terms of QALYs, 0.105, is estimated among women with a history of AH starting at age 35. Between prophylaxis with raloxifene vs no prophylaxis, all outcomes in terms of LYGs are increased by chemoprevention. Outcomes in terms of QALYs are increased except for women with a 5-year predicted breast cancer risk of ⩾1.66%, and women with a 5-year predicted breast cancer risk of 3.01–5.00%. The largest outcome gain in terms of QALYs, 0.058, is estimated among women with a history of AH starting at age 50. Table 5 shows the results of cost-effectiveness analysis of therapeutic policy switch from tamoxifen to raloxifene.
Table 5

Results of cost-effectiveness analysis (2)

  Cost (¥)
Effectiveness (LYGs)
Effectiveness (QALYs)
Incremental cost-effectiveness ratio
Prophylaxis with tamoxifen vs prophylaxis with raloxifene Tamoxifen Raloxifene Incremental Tamoxifen Raloxifene Incremental Tamoxifen Raloxifene Incremental (¥/LYG) (¥/QALY)
Five-year predicted breast cancer risk ⩾1.66%
 Starting at age 5017 751 35317 833 02081 66722.16722.1900.02322.00022.0270.0273501 7233035 955a
 Starting at age 6020 324 29420 427 386103 09318.80718.8220.01518.65418.6700.0167107 8756364 920
            
Five-year predicted breast cancer risk 3.01–5.00%
 Starting at age 5017 732 90017 794 89061 99022.18522.2140.02922.03722.0710.0342163 0791839 670a
 Starting at age 6020 444 14120 529 45285 31218.79718.8200.02318.66618.6940.0283741 9063063 477a
            
Five-year predicted breast cancer risk ⩾5.01%
 Starting at age 5017 800 76617 911 198110 43222.09622.1110.01521.85421.8710.0177150 4906542 190
 Starting at age 6020 058 02020 161 888103 86918.82518.8390.01418.61818.6330.0157476 3326771 100
            
History of lobular carcinoma in situ
 Starting at age 5017 850 77217 935 69784 92522.08522.1070.02221.84321.8690.0253846 4263359 650a
 Starting at age 6020 093 21120 186 54993 33818.81518.8330.01818.60618.6280.0225064 7244311 015a
            
History of atypical hyperplasia
 Starting at age 5017 692 02017 795 708103 68822.13922.1560.01821.92221.9420.0195922 2945320 037a
 Starting at age 6020 096 73120 198 328101 59818.83718.8520.01518.65118.6680.0176637 3325872 017a

Cost-effective when compared to a suggested criterion in Japan (Ohkusa, 2003) of ¥6000 000 for one QALY gain.

Raloxifene is consistently superior to tamoxifen across presented risk classifications and starting ages of prophylaxis.

Costs

In the comparison between prophylaxis with tamoxifen vs no prophylaxis (Table 4), cost savings are estimated in higher risk classifications, among women with a history of LCIS or AH, starting at younger age. The largest saving, ¥367 901 (£1840), is estimated among women with a history of AH starting at age 35. Between prophylaxis with raloxifene vs no prophylaxis, prophylaxes are found more costly. A cost saving of ¥10 387 (£52) is estimated among women with a history of AH starting at age 50. When considering the therapeutic policy switch (Table 5), the use of raloxifene is consistently more costly than tamoxifen, as anticipated by the difference in price of agents.

Cost-effectiveness

There is a suggested criterion for cost-effectiveness in Japan (Ohkusa, 2003) to be ¥6000 000 (£30 000) for one QALY gain, and both Tables 4 and 5 report judgements with this criterion. In the comparison between prophylaxis with tamoxifen vs no prophylaxis, favourable results, that is ‘cost less and gain more’ or cost-effective, are obtained in higher risk classifications starting at younger age. Those are: women with a history of AH regardless of starting age, women with a history of LCIS starting at age 35 and 50, and women with a 5-year predicted breast cancer risk of ⩾5.01% starting at age 35 and 50. Similar results are found between prophylaxis with raloxifene vs no prophylaxis. Favourable results are: women with a history of AH regardless of starting age, women with a history of LCIS starting at age 50, and women with a 5-year predicted breast cancer risk of ⩾5.01% starting at age 50. As shown in Table 5, ICERs for the therapeutic policy switch of prophylactic agent from tamoxifen to raloxifene varies from ¥1839 670 per QALY (£9198 per QALY) to ¥6771 100 per QALY (£33 856 per QALY). The larger ICER is yet still close to the suggested criterion of ¥6000 000 per QALY (£30 000 per QALY).

Stability of cost-effectiveness

One-way sensitivity analyses produce similar results across the agents, the risk classifications and the ages of starting prophylaxis. Therefore, we draw a cost-effectiveness plane to show the comparison between prophylaxis with raloxifene vs no prophylaxis among three risk classifications as an example: women with a 5-year predicted breast cancer risk of ⩾5.01%, women with a history of LCIS, and women with a history of AH. Figure 2 plots three base-case values and 306 results (102 changes of variables × three different risk classifications). Line OA indicates the threshold of favourable ICER compared to the suggested criterion of ¥6000 000 (£30 000) for one QALY gain. Most results are plotted close to base-case value, which suggest the stability of our model. Results for women with a history of AH remain constantly favourable being cost saving or cost-effective by the change of variables except for one plot shown as in area B. However, several results for women with a 5-year predicted breast cancer risk of ⩾5.01% and for women with a history of LCIS cross the threshold line, the vertical axis or the horizontal axis from the base-case values. Three plots in area B and seven plots in area C indicate that results turn unfavourably, that is cost-ineffective or ‘gain less’, whereas plots in area D show that results become cost saving.
Figure 2

Illustration of key results of sensitivity analyses: prophylaxis with raloxifene vs no prophylaxis starting at age 50.

Our model is most sensitive to the utility weight for healthy state under chemoprevention, of which plots are drawn in area B. Its change to 0.79 turns incremental effectiveness into negative. Critical values to change the judgement are 0.98, which makes the ICERs of women with a 5-year predicted breast cancer risk of ⩾5.01% and woman with a history of LCIS cost-ineffective, and the value of 0.96 makes women with a history of AH ‘gain less’. The model is also sensitive to the discount rate, of which plot is drawn in area C. Its raise of 5.9 and 4.3% makes the ICERs of women with a 5-year predicted breast cancer risk of ⩾5.01% and women with a history of LCIS cost-ineffective, respectively. The cost of chemoprevention is also influential to the results, of which results are shown in areas C and D. A price increase of more than 30% for raloxifene makes the ICER of women with a history of LCIS cost-ineffective, whereas a price decrease of more than 16 or 29% make the results for women with a 5-year predicted breast cancer risk of ⩾5.01% and women with a history of LCIS cost saving, respectively. Changes of the probabilities of transition to invasive breast cancer, endometrial cancer, and hip fracture are also plotted in areas C and D. Raising the probability of invasive breast cancer beyond 0.00710 and 0.00683 makes the ICERs of women with a 5-year predicted breast cancer risk of ⩾5.01% and women with a history of LCIS cost-ineffective, whereas lowering to less than 0.00456 or 0.00436 make the results for women with a 5-year predicted breast cancer risk of ⩾5.01% and women a history of LCIS cost saving, respectively. Raising the probability of endometrial cancer beyond 0.00369 and 0.00271 makes the ICERs of women with a 5-year predicted breast cancer risk of ⩾5.01% and women with a history of LCIS cost-ineffective, respectively. Raising probability of hip fracture beyond 0.00098 makes the results for women with a history of LCIS cost saving. The other plots in area C reflect a raise of utility weight for invasive breast cancer after the second year. Prolonging risk reduction effect of tamoxifen from 5 to 10 and 15 years without any risk increase of adverse events after the completion of prophylaxis brings more favourable results. For example, the effect of 10 years results in ‘cost less and gain more’ for every risk classification starting at age 35, whereas the effect of 15 years makes no change in the results of ‘cost more and gain less’ among women with a 5-year predicted breast cancer risk of ⩾1.66% starting at age 50 and 60.

Discussion

We conduct a cost-effectiveness analysis of SERMs as prophylactic agents against breast cancer among high-risk women by making comparisons between status quo in Japan, without prophylaxis, and hypothetical practise, with prophylaxis, by the agent (tamoxifen and raloxifene), the risk classification, and the age of starting prophylaxis. We find that prophylaxis with tamoxifen results in ‘cost less and gain more’ among extremely high-risk women such as those with a 5-year predicted breast cancer risk of ⩾5.01%, those with a history of LCIS, and those with a history of AH starting at age 35 and 50. Prophylaxis with raloxifene is also found ‘cost less and gain more’ for women with a history of AH starting at age 50. The younger the age of starting prophylaxis, the more the cost saving and outcome gain. We also find that prophylaxis with tamoxifen for women with a history of AH starting at age 60 results in favourable ICER compared to the suggested criterion of ¥6000 000 (£30 000) for one QALY gain. Prophylaxis with raloxifene is also found cost-effective for women with a 5-year predicted breast cancer risk of ⩾5.01% starting at age 50, those with a history of LCIS starting at age 50 and those with a history of AH starting at age 60. The younger the age of starting prophylaxis, the more favourable the ICER. Within the same risk classification and starting age, raloxifene tends to gain more and cost more compared to tamoxifen. On the contrary, we also find that prophylaxes with tamoxifen or raloxifene for women with a 5-year predicted breast cancer risk of ⩽5.00% tend to result in ‘cost more and gain less’. These findings are similar to the previous economic evaluations of chemoprevention of breast cancer with tamoxifen including analyses of risk level differences such as Noe ; Grann ; Hershman ; Melnikow , although these studies are carried out under the US health system. Our findings suggest that introduction of chemoprevention with SERMs targeting extremely high-risk women in Japan can be justifiable as an efficient use of finite health-care resources, possibly contributing to cost containment. The cost saving results suggest chemoprevention not only cost-effective but also affordable. Taking the superiority of raloxifene in outcome gain and the difference in indication into account, it is recommendable to administer tamoxifen for premenopausal women and raloxifene for postmenopausal women. Our economic model is found sensitive to the utility weight for healthy state under chemoprevention, the discount rate and the cost of chemoprevention, in addition to the probabilities of transition to invasive breast cancer, endometrial cancer, or hip fracture. This is anticipated because these variables are supposed to influence the cost-effectiveness of preventive services. We think that our economic model succeeds in explaining the context under consideration. We also analysed the cost-effectiveness of therapeutic policy switch of agent, tamoxifen to raloxifene among postmenopausal women, although this does not depict any marginal change in Japan. All simulated ICERs by risk classifications starting at age 50 and 60 fall in a favourable level. Due caution is needed in transferring these findings from our Japanese model to other health system (Drummond and Pang, 2001), but it implies that the administration of raloxifene instead of tamoxifen for postmenopausal high-risk women could be economically acceptable in developed countries where chemoprevention with tamoxifen is already in practise. There are a couple of points to consider when interpreting our results. Our model depends on clinical evidence established in the United States by P-1 and P-2 trial. Composition of ethnicity and life styles of participating women are different from those of Japanese women. This also relates to another point, that is the validity of the 5-year risk prediction model defining high-risk women. As already mentioned in Methods section, it is based on Gail et al model 2 (Gail and Costantino, 2001), which has been validated for white women (Rockhill ) and African American women (Gail ) only. Our approach is acceptable as to these points, as the results of P-1 and P-2 trial are the best available evidence to date for the objectives of this study, and similar risk factors to Gail et al model 2 are identified in a model of individualised probability of developing breast cancer for Japanese women (Ueda ), and the function of ethnic difference in developing breast cancer is reported as small (Chen ). Our model also depends on utility weights reported from Western countries, as none of those from Japan are available. However, our findings of consistent outcomes in terms of LYGs offer reasonable conclusions. In summary, this study suggests that chemoprevention of breast cancer with SERMs targeting high-risk women such as a 5-year predicted breast cancer risk of ⩾5.01%, women with a history of LCIS, and women with a history of AH, clears the hurdles of introducing new intervention by means of cost-effectiveness and affordability, with best available evidence. Although further studies and policy formulations are necessary about breast cancer chemoprevention in Japan, this study also implies that the administration of raloxifene instead of tamoxifen may be cost-effective under the context of developed countries where chemoprevention with tamoxifen has already been adopted.
  35 in total

1.  Estimation of individualized probabilities of developing breast cancer for Japanese women.

Authors:  Kimiko Ueda; Hideaki Tsukuma; Hideo Tanaka; Wakiko Ajiki; Akira Oshima
Journal:  Breast Cancer       Date:  2003       Impact factor: 4.239

2.  Inferior vena cava filter is a new additional therapeutic option to reduce mortality from acute pulmonary embolism.

Authors:  Masahito Sakuma; Mashio Nakamura; Norifumi Nakanishi; Yoshiyuki Miyahara; Nobuhiro Tanabe; Norikazu Yamada; Takayuki Kuriyama; Takeyoshi Kunieda; Tsuneaki Sugimoto; Takeshi Nakano; Kunio Shirato
Journal:  Circ J       Date:  2004-09       Impact factor: 2.993

3.  Effects of raloxifene on bone mineral density, serum cholesterol concentrations, and uterine endometrium in postmenopausal women.

Authors:  P D Delmas; N H Bjarnason; B H Mitlak; A C Ravoux; A S Shah; W J Huster; M Draper; C Christiansen
Journal:  N Engl J Med       Date:  1997-12-04       Impact factor: 91.245

4.  Decision analysis of prophylactic mastectomy and oophorectomy in BRCA1-positive or BRCA2-positive patients.

Authors:  V R Grann; K S Panageas; W Whang; K H Antman; A I Neugut
Journal:  J Clin Oncol       Date:  1998-03       Impact factor: 44.544

5.  Tamoxifen for breast cancer prevention: a framework for clinical decisions.

Authors:  Samuel Cykert; Nancy Phifer; Charles Hansen
Journal:  Obstet Gynecol       Date:  2004-09       Impact factor: 7.661

6.  The efficacy and cost-effectiveness of adjuvant therapy of early breast cancer in premenopausal women.

Authors:  T J Smith; B E Hillner
Journal:  J Clin Oncol       Date:  1993-04       Impact factor: 44.544

7.  Assessing the cost effectiveness of adjuvant therapies in early breast cancer using a decision analysis model.

Authors:  B E Hillner; T J Smith; C E Desch
Journal:  Breast Cancer Res Treat       Date:  1993       Impact factor: 4.872

8.  Cost-effectiveness of the bird's nest filter for preventing pulmonary embolism among patients with malignant brain tumors and deep venous thrombosis of the lower extremities.

Authors:  Quan Chau; Scott B Cantor; Elenir Caramel; Marshall Hicks; Danna Kurtin; Tejpal Grover; Linda S Elting
Journal:  Support Care Cancer       Date:  2003-09-13       Impact factor: 3.603

9.  Breast cancer screening and cost-effectiveness; policy alternatives, quality of life considerations and the possible impact of uncertain factors.

Authors:  H J de Koning; B M van Ineveld; G J van Oortmarssen; J C de Haes; H J Collette; J H Hendriks; P J van der Maas
Journal:  Int J Cancer       Date:  1991-10-21       Impact factor: 7.396

10.  Does mammographic density reflect ethnic differences in breast cancer incidence rates?

Authors:  Zhengjia Chen; Anna H Wu; W James Gauderman; Leslie Bernstein; Huiyan Ma; Malcolm C Pike; Giske Ursin
Journal:  Am J Epidemiol       Date:  2004-01-15       Impact factor: 4.897

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