R E S E A R C H A R T I C L E Open Access The 2010 expansion of activity-based hospital payment in Israel: an evaluation of effects at the ward level Ruth Waitzberg 1,2,3* , Wilm Quentin 3,4 , Elad Daniels 1 , Vadim Perman 5 , Shuli Brammli-Greenberg 1,6 , Reinhard Busse 3,4 and Dan Greenberg 2 Abstract Background: In 2010, Israel intensified its adoption of Procedure-Related Group (PRG) based hospital payments, a local version of DRG (Diagnosis-related group). PRGs were created for certain procedures by clinical fields such as urology, orthopedics, and ophthalmology. Non-pr ocedural hospitalizat ions and other specific procedures continued to be paid for as per-diems (PD). Whether this payment re form affected inpatient activities, measured by the number of dischar ges and average length of stay (ALoS), is unclear. Methods: We analyzed inp atient data provided by the Ministry of Health from all 29 public hospitals in Israel . Our observations were hospital wards for the years 2008 – 2015, as proxies to clinical fields. We inve stigated the impact of this reform at the ward level using difference-in-differences analyses among procedural wards. Those for which PRG codes were created were treatment wards, other procedural wards served as controls. We further refined the analysis of effects on each ward separately. Results: Discharges increased more in the wards that were part of the control group than in the treatment wards as a group. However, a refined analysis of each treated ward separately reveals that discharges increased in some, but decreased in other wards. ALoS decreased more in treatment ward s. Difference-in-differences results could not suggest causality between the PRG payment reform and changes in inp atient activity. Conclusions: Factors that may have hampered the effects of the reform are inadequate pricing of procedures, conflicting incentives created by other co-existing hospital-payment components, such as caps and retrospective subsidies, and the lack of resources to increase productivity. Payment reforms for health providers such as hospitals need to take into cons ideration the entire provider market, availabl e resources, other – poten tially conflicting – payment components, and the various parties involved and their interests. Keywords: Activity-based payments , Procedure-related group (PRG), Diagnosis -related group (DRG), Hospital financial incentives, Health-policy reform, Provider-payment reform © The Author(s). 2019 Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License ( http://creativecommons. org/licenses/by/4.0/ ), which permits unrestricted use, distribution , and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver ( http://creativecommons.org/publicdomain/zero/1.0/ ) applies to the data made availabl e in this article, unless otherwise stated. * Correspondence: [email protected] 1 The Smokler Center for Health Policy Research, Myers-JDC-Brookdale Institute, JDC Hill, P.O.B. 3886, 91037 Jerusalem, Israel 2 Department of Health Systems Management, School of Public Health, Faculty of Health Sciences, Ben-Gurion University of the Negev, Beer-Sheva, Israel Full list of author informa tion is available at the end of the article Waitzberg et al. BMC Health Services Research (2019) 19:292 https://doi.org/10.1186/s12913-019- 4083-4 Highlights Israel intensified adoption of PRG payments to hospitals in 2010. Discharges increa sed in some, but decrea sed in other treatment-group wards. ALoS decrea sed more in treatment-group wards. Difference-in-diff erence result s could not suggest causality of the reform for these changes. Payment reforms should consider the entire provider market and payment mechanism . Background Payment s to healthcare providers entail a set of econ omic incentives that influence provider behavior and decision-m aking [ 1 , 2 ]. Israel adopt ed activi ty-based payment s to replace per diems (PDs ) and created codes for 30 common procedur es a s early as the 1990s [ 3 ]. The main objective of the chan ge was to short en waiting times for expen sive procedures invo lving brief hospital stays , for which the PD paym ent was insuffic ient so that hospitals were discoura ged from performing them [ 4 ]. Due to data and policy constraint s , Israel chose procedure-relat ed groups (PRGs) rather than Diagnosis Related Groups (DRGs) a s the basis for mea suring activ - ity. PRGs differ from DRGs in that they are defined based on type of treatment (surgica l procedure) rather than diagnosis , and they are not adjusted for ca se-mix or disea se severity [ 5 ]. In the pa st two de cades , many OECD countries have shifted to hospi tal payment s based on activity and adopted diagnosis-related groups ( DRGs) as payment units but, unlike the Israeli case, their main objectives were to increase e fficiency and transparenc y [ 6 ]. DRGs are still being adopted by mid-income countries [ 7 ]. In 2002, continuing the move towards activity-based payments , the Israeli Ministry of Health (MoH) created PRG codes for more procedures , in the same timing DRGs were introduced in some OECD countries such a s Estonia, G ermany and the Netherlands [ 6 ]. Since 2010, the MoH ha s further expanded the application of PRGs to several clinical specialties , in three main waves: 1. Wave 1: 2010 – 2012, trauma in orthopedics 2. Wave 2: 2013 – 2014, urology, general surgery, ophthalmology, head and ne ck surger y 3. Wave 3: 2015, orthopedics and MRI The objectives of the 2010 – 2015 “ PRG reform ” mainly concerned transparency and a fai r distribution of funds. The specific objectives were to refi ne the unit of payment and establish consistent costing and pricing mechanisms in order to reduce cost- price ga ps , im pr ov e M oH a bi li ty t o s et p ol ic y an d pr io ri ti es , in fl ue nc e t he s up pl y o f ho sp it al s e r vic e s by ad ju st in g prices , and conduct super vision and control [ 5 ]. Furthermore, PRG payment s were expec ted to change the incentives for hospitals. If PD payment s create incentives for longer stays , PRGs create incentives to perform more procedures and shorten the length of stay (LoS), to minimize operating costs and ma ximize profits. Many studies have eva luated the impact of DRG-based payment s in high- a nd middle-income co un tr ie s on v ol um e o f ac ti vit y , Lo S , an d qu al it y of care [ 8 – 10 ]. In Israel, Shmueli and colleagues [ 11 ] examined the effects of the early introduction of PRG payments for five major procedures , one year after implementation in 1990. They fo u nd that the volume of activity increased for two procedures , remained unchanged for two others, and decrea sed for the last one. Regarding LoS , there was a modest de crease in three procedures and a significant decrea se in the other two. A later study eva luated the effe ct of in- corporating the time inter val between hospitalization and treatment (of h ip fractures) in the PRG t ariff (maximum fees are paid for patients operated within 48 h, for those operated later , payments are signifi- cantly lower); it found that the LoS decreased follow- ing this change in payment method [ 12 ]. Since then, n o study has evaluated the effects of the la te r ad o pt ion o f P RG s on h os pi t al a ct iv it y. Th e effect s of the 2010-reform thus remain largely un kn ow n, p re ve nt ing ev id en ce -i nf or m ed d is cu ss ion of its benefits and challenges. The current study adds to the previous literature both by analyzing the changes that have occurred since then, and extending it , by examining all the hospital data and including all the activities performed at the ward l evel. Background on the Israeli case and the hospital market Since 1995, Israel ha s had a national health insu rance (NHI): four competing , non- profit health plans (HPs) are responsible for providing and managing a broad ben- efits package determined by the governmen t. The HPs provide care in the community an d purcha se hospital ser vices for their members. Of the 44 general hospitals in Israel, 35 are non-profit and owned by the Ministry of Health (M oH ), t he m un ic ip al it i es , the Cla li t H P or N GO s. These are considered “ public hospitals. ” The o th er nine are smaller , for -pro fit hospitals , and operate 3% of the beds. The main source of income of Israeli public hospitals is the sale of ser vices to HPs and the National Insurance Institu te (NII) (see left-hand Waitzberg et al. BMC Health Services Research (2019) 19:292 Page 2 of 9 column in Fig. 1 ). Hospital reimbursement rates are determined by a joint MoH and Ministry of Finance (MoF) pricing committee, stipulated in the “ Pr ice L i st for Ambulatory and Inpatient Ser vices. ” Thi s ma x - imum list- price (tariff ) also determines the type of payment, which can be PD; per activity (PRG); or fee- fo r -se r vice (F FS) (s ee ri ght -h an d colu mn in Fig . 1 ). T here ar e curr entl y 24 PD rate s acco rdi ng to ward ty pe and le ngth o f stay (t he ta ri ff of th e fi rst th ree da ys is hi gher than the tari ff of th e sub sequ en t days ), ab out 32 0 PRG code s, and more than 16 00 amb ula tory se r vice code s. In 2015 , 25 % of th e gr oss rev enue of hosp it als was fo r in- pa tien t care pa id as PRGs, 37% for inp ati ent ca re pai d as PD s , 21% fo r amb ulat ory c are pa id as FFS or PR Gs, 8% for birt hs pa id as PR Gs, 6% for em er genc y care pai d as FFS, and 3% from ot he r sour ces such as th e Mini stry of Defe ns e or the mili tary [ 13 ]. The sale of ser vices c overs hospital marginal cost s and some fixed costs suc h as physician salaries. Public hospitals also receive “ prospective subsidies ” in the form of global budgets from the MoH to cover part of the other fixed cost s such as infra structure and equipment. Furthermore, the government provides “ retrospe ctive subsidies ” f o rp u b l i ch o s p i t a l sw i t haf i - nancial deficit at the end of each year. Both s ubsidies are negotiated with both the MoH and MoF. Overall, hospitals received about NIS 1500 million, which roughly represents 12% of their income from govern- me nt sub sid ie s ( y el lo w bo x in Fi g . 1 )[ 13 ]. Is ra eli p ub li c h os pi ta ls a re s ub je c t to t w o maj o r income constraint s. The first, p ut in place in 2 005, is a cap mechanism; the MoH sets annual caps on hos - pital revenues from each HP to each hospital (see vertical arrows at right-hand si de of Fig. 1 ). In re cent years , caps have been set as a floor (lower cap bound) and a ceiling (upper cap bound), and are updated every thre e years. The floor is a minimum payment amount, set in 2016 a s 93% of the previous year ’ s expenditure for each HP to each hospital. If an HP consumes ser vices that , at “ list pri ces ” ,w o u l dh a v ea n aggregate cost of less than the lower cap, the HP pays 93% of the previous year ’ s exp en d it ur e to t he h os pi ta l in any case. The ceiling is a ma ximum payment a m o u n ta n dw h e na nH Ps p e n d sm o r et h a nt h i s threshold, it pays only a percentage (less than 100%) of the full price [ 14 ]. Towards the end o f the finan- cial year , once the upper bound of the cap is rea ched, there is an incentive for HP to refer patient s , when possib le (e.g., for elective pro cedures) to the hosp ital as they do not pay the full price for these ser vices. In 2016, the hospitals ’ net income was 15% lower than the potential gross income due to discount s related to the cap me chanism [ 13 ]. The se c on d c on str a in t is a negotiated alternative reimbursement contract Fig. 1 Public hospitals' sources of income, types of payment and cap mechanism Notes: H: hospitals, MoH: Ministry of Health, MoF: Ministry of Finance, HP: health plan, NII: National Insurance Institute, GB: global budget s, PD: per diem, PRG: procedure-related group, FFS: fee-for-service. Waitzberg et al. BMC Health Services Research (2019) 19:292 Page 3 of 9 between an HP and a hospital that may supplant the official cap, with such contracts entailing discounts that vary across HPs and hospitals [ 4 ]. In 2015, indi- vidual discounts represented 4% of the hospitals ’ gross income [ 13 ]. Acute hospital care in Israel has a high rate of overcrowding , one of the highest among OECD countries. Compared with the OECD average, Israeli hospitals function with half the rates of acute-care beds and nurses per population. In 2017 , the average length of stay (ALoS) in Israeli hospitals wa s 4 days , one of the shortest , and occupancy rates of acute-care be ds was one of t he highest among OECD countries , reaching almost full capacity, 93%. Nonetheless , the number of disch arges per 100,000 population in Israel is almost the same as the OECD av e ra g e [ 15 , 16 ]. Objectives Our objective was to examine changes in the volume of activity, measured by the number of discharges and AL oS , i n hos p it als fo ll ow in g th e PR G re fo r m. Th e focus was on changes on the macro/system level, aiming at draw generalizable conclusions about the payment- policy change rather than an examination of the impact on specific procedures or hospitals. Since PRG codes were created in waves by clinical area , we hypothesized increasing volumes and decrea sing ALoS in the clinical area s for which PRG codes were created. Our analysis focuses on hospital wards a s a proxy for such clinical area s. Economic theory suggests that hospitals r eact to economic incentives derived from payment me cha- nisms [ 17 ]. Peleg and colleagues [ 12 ] show tha t im- mediately after the adoption of the refined PRG codes , Israeli hospitals reacted b y costing the wait be- tween injury and surgery for timing of hip fracture procedures. Ba sed on international experienc e [ 9 ], it is quite plausible that this was a reaction to the PRG r e f o r m .H o w e v e r ,i nc o n t r a s tt oo t h e rO E C D countries, where DRGs were adopted to improve efficiency, Israeli hospitals operated with relatively limited resources even before the adoption of PRGs in 2010, potentially limiting the hospitals ’ capacity for increased activity. The analysis of the effect of the PRG reform on hospital v olume and ALoS, in so different an environment, thus provides an interesting case . Methods The analysis is based on data on inpatient care pro- vided by the MoH for all public general hospi tals. Our obser vations w ere of hospital wards for the years 2008 – 15 , tw o ye a rs p rio r t o th e fi rs t wav e of r ef or m (2008 – 10) and two years after each wave (2011 – 13, period1; 2014 – 15, period2). The data were aggregate; they did not apply to individual patient s or the level of procedures. Derived from HP -hospital accounts re- ported to the MoH, the dat a included the following variables: wa rd type, hospital c ode, dummy for hospital location in the periphery, owne rship (govern- ment, HP or NGO), number of annual discharges per ward, and annual ALoS per ward. T he data related to procedural acute-care wards. They excluded medical wards (such a s internal medicine, neurology and pediatrics) since in medical wards there are few pro- cedures and PRG payment s. We further excluded long-term care wards such as psychiatry, rehabilita- tion and geriatrics; intensive-care and obser vation wards since they are not good proxies for specific medical areas; and obstetric wards be cause deliveries are paid for by the NII, rather than HPs and the reimbursement mechanism described above does not apply (there are no caps , s ubsidies or negotiation of discounts with hospitals). To investigate changes in the number of d ischarges and in ALoS, we chose a differe nce-in-differences (DiD) approach that compares treatment and control groups for the period before and after wa ves 1 and 2 of the PRG reform. Although there wer e PRG codes before 2010, most of them were created in the 1990s and in 2002. T hus , their impact occurred before 2008 and they should not blur the ef fect s of the 2010 – 14 waves. T he treatment group wa s composed of procedural wards for which blocks of PRG c odes were created b etween 2010 and 2014 . The control group was composed of procedural wards for which no PRG codes were created in the same period. We analyz ed the effects of the PRG ref orm on the num- ber of discharges and the ALoS for wa ves 1 and 2 separately (Eqs. 1 and 2 below), and then the effe cts on each ward (Eqs. 3 and 4 ), since the reform might have affected each ward in a different manner , direction or intensity. The first wa ve refers to codes created in 2010 – 12 for orthopedic procedures; the second wa ve, for cod es create d from July 20 13 to January 2014 for procedures in general surgery, urology, ophthalmology, and head and n eck surgery. The 2015 wave is not analyzed in this work a s not enough time has passed to obser ve its effe cts. The control g roup co nsist s of pe diatric surgery , cardi ova s- cular surgery, va scular s urge ry, pla stic surgery, gynecology, neurosurgery, oral and ma xillofacial surgery wards. The data were analyzed using SPSS 24 version (SPSS -IBM). We calculated the number of annual discharges and the ALoS for each treatment and control group. T he ALoS wa s weighted for size of Waitzberg et al. BMC Health Services Research (2019) 19:292 Page 4 of 9 ward (mea sured by t he number of disc harges). The weighting was pe rformed to balance the relative i n flu- ence of each w ard on the ALoS. For example, the re la ti ve i m por ta nc e o f a s ma ll ward wit h a lo ng er ALoS is smaller than that of a large ward with a sh or te r AL oS . Th e ch a ng in g tr en ds i n th e v olu m e of discharges and in ALoS are depicted in graph form. To verify the independent impac t of each wave of PRG reform on the dependent variables (the number of annual discharges and the ALoS per ward), we per- formed a DiD analysis. We conducted the analysis using ordinary lea st squares (OLS) regressions. To mitigate skewness of the depen dent variables , we transformed them with a natural logarithm. We con- trolled for hospital, wards and year fi xed effe cts. We clustered the data by ward s , given that the same type of ward in differ ent hospitals should exhibit more robust homogeneity than different wards within each hospital. We built one regression for each dependent variable following the models below: lndis it ¼ α þ β 1 wave 1 it þ β 2 wave 2 it þ γ 1 period 1 it þ γ 2 per iod 2 it þ δ 1 wave 1 period 1 ðÞ it þ δ 2 wave 1 period 2 ðÞ it þ δ 3 wave 2 period 2 ðÞ it þ C i þ t i þ e ð 1 Þ lnALoS it ¼ α þ β 1 wave 1 it þ β 2 wave 2 it þ γ 1 period 1 it þ γ 2 period 2 it þ δ 1 wave 1 period 1 ðÞ it þ δ 2 wave 1 period 2 ðÞ it þ δ 3 wave 2 period 2 ðÞ it þ C i þ t i þ e ð 2 Þ For both equations , α represent s the interc ept that captures the model ’ s unexplained variance. The wave variable is a dummy for the two set s of treatment and control groups (wave 1 for orthopedics vs. the others ; and wave 2 for general surgery, urol ogy, oph- thalmology, head and neck surgery vs. other proced- ural, non-participant wards). We examined the short- and long-term impact of wave 1 (orthopedics) and the short- term impact of wa ve 2 represented in the equation by pe r iod 1 , which refers to 2011 – 13; and period 2, which refers to 2014 and 2015 . The coeffi- cient of interest is δ , the DiD estimator , as it captures the treatment groups of war ds in the period after each reform wave: δ (wave* per iod) . δ 1 and δ 2 capture the short- and long-term effe cts of the first wave, re- spectively. δ 3 capt ures the shor t- term ef fects of the second wave of PRG expansion. The control variables, C i, are t he fixe d effects fo r hosp ital s and wards, and T i , for time trends (year). In a more refined an alysis , we examined the reform ’ s effect s in each ward separately, according to the follow- ing models: In d i s it ¼ α þ β 1 or t hope d ics it þ β 2 g ensur g it þ β 2 ur ol og y it þ β 2 opht al mol og y it þ β 2 head neck it þ γ 1 per iod 1 it þ γ 2 per iod 2 it þ δ 1 ð or t hoped ics per iod 1 Þ it þ δ 2 ð or t hoped ics per iod 2 Þ it þ δ 3 ð g ensur g per iod 2 Þ it þ δ 4 ð ur ol og y per iod 2 Þ it þ δ 4 ð opht hal mog y per iod 2 Þ it þ δ 6 ð head nec k per iod 2 Þ it þ C i þ t i þ e ð 3 Þ l nALoS it ¼ α þ β 1 or t hoped ics it þ β 2 g ensur g it þ β 2 ur ol og y it þ β 2 oph t al mol og y it þ β 2 head neck it þ γ 1 per iod 1 it þ γ 2 per iod 2 it þ δ 1 ð or t hoped ics per iod 1 Þ it þ δ 2 ð or t hoped ics per iod 2 Þ it þ δ 3 ð g ensur g per iod 2 Þ it þ δ 4 ð ur ol og y per iod 2 Þ it þ δ 4 ð opht hal mog y per iod 2 Þ it þ δ 6 ð head nec k per iod 2 Þ it þ C i þ t i þ e ð 4 Þ Results T able 1 summarizes the changes in the numbe r of discharges and AL oS in the stud y period, by treatment and control group. Fig ures 2 and 3 also show trends over time. Since we excluded some wards from the analysis , the number of discharges is smaller than the national data reported by the MoH, rangin g from 376,480 in 2008 to 410,160 in 2015, an increa se of 9%; the ALoS remained constant at 4.1 days. Our findings show that the trends and changes in ALoS and the number of discharges over time, in our data set , are the same a s that recorde d by the MoH. When analyzing the changes in the number of discharges by treatme nt and control group, we see that it increased more markedly in control (non-participant ) wards (12%) com pared with treatme nt (participant) wards (7%). Howe ver , while refining the analysis to focus on specific treatment wards , we obser ved an increa se in volume in the general surgery, orthope dics and urology wards , but a sharp de crea se in ophthalmology , and no change in the head and ne ck surgery ward, despite the high rate of population growth of 1.8% annually. The ALoS decrea sed mor e sharply in participant wards (6%) than in non-parti cipant wards (1% ). These result s are in line with our hypothesis that the adoptio n of PRGs increases volume and short ens length of stay. A more in-depth focus on ea ch participa nt ward show s that the ALoS decrea sed sharply in urology and in head and neck Waitzberg et al. BMC Health Services Research (2019) 19:292 Page 5 of 9 surgery (14 and 16% respective ly), but remained almost unchanged in orthopedi cs and urology. Multivariable DiD analysis T h er e s u l t so ft h em u l t i v a r i a b l eD i Da n a l y s i sa r e presented in T able 2 . Our coefficient s of interest , δ , are the DiD estimates of the interaction between the treatment dummies (waves, coded with re ceived treat- ment = 1) and our period variables (2011 – 13 and 2014 – 15). The table shows result s for model 1 (com- paring treatment and control wards) and model 2 (analysis at the ward level) for both the natural loga- rithm of number of discharges and the ALoS. In all models , the DiD estimates were small and not signifi- cant with the exception of the head and neck surgery ward where the discharges and ALoS decrea sed by 24% and 9%, respe ctively. Discussion In our study, des pite the changes seen in the descriptive st atist ics, th e DiD an alysi s coul d not de mons trat e caus ali ty betw een the PR G re form and th e ch an ging vo lume of ho s- pita l activi ties or the ALo S, at le ast not when co mpar ing inpa tient a cti viti es at th e ward lev el. It is lik ely that th e ad opti on of P RGs cr eate d ince nt ive s to inc rease th e vo l- ume o f speci fi c proc ed ures or to ch ange the qua lity of care . Ho wever , an ex amina tion of su ch an impa ct was be- yond the sc ope of th is st udy. Rapid popu lati on gro wth an d ag ing ma y expl ain part of the vol ume i ncre ases wh ile techn ologic al inn ovati ons th at all ow for sh ort er ho spit al st ays ma y be re late d to the dec re ase in AL oS. One plausible explanation for the counterintuitive finding of no significant PRG-refor m effe ct, which de- ser ves fur ther analysis , is the difference between PRG payment s and the previous PD payment s for the same procedure. If the PRG tariff is lower tha n the original Table 1 Summary of changes in number of discharges and ALoS, 2008 – 2015, by ward Procedural non- participant Procedural participant General surgery Orthopedics Urology Ophthalmo logy Head and neck surgery Discharges 2008 148,077 228,403 97,822 52,711 30,190 18,590 29,090 2015 166,478 243,681 106,219 58,799 34,563 15,219 28,881 change 18,401 15,278 8397 6088 4373 − 3371 − 209 % change 12% 7% 9% 12% 14% − 18% − 1% ALoS 2008 4.30 3.82 3.85 5.25 4.06 2.78 3.02 2015 4.26 3.59 3.59 5.39 3.49 2.72 2.53 change − 0.04 − 0.24 − 0.26 0.14 − 0.57 − 0.06 − 0.48 % change − 1% − 6% − 7% 3% − 14% − 2% − 16% Notes: ALoS = average length of stay, ALoS are weighted by ward size. Reform participant (treatment) wards consist of general surgery, urology, ophthalmology, head and neck surgery. Non-participant (control group) include pediatric surg ery, cardiovascular surgery, vascular surgery, gynecology, neurosurger y, oral and maxillofacial surgery wards Fig. 2 Number of discharges, by type of wards Waitzberg et al. BMC Health Services Research (2019) 19:292 Page 6 of 9 PD payment (calculated a s the PD rate times the length of stay), the reform might not creat e a strong incentive to increa se volume. This might be particularly true in Israel where the pricing me chanism is constrained and somewhat distort ed due to a budget-neutral requirement that may lead to inaccurate prices [ 5 ]. In a 2018 qualitative stud y, hospital managers , ward dire ctors , and surgeons reported that indeed , most PRG-paid proce- dures were underpriced [ 18 ]. A se cond possible explanation is that Israeli hospitals already worked under pressu re before adopting PRGs , leaving little room for further increa se of activities or reduction of length of stay. It is possible that hospitals simply do not have the necessary res ources to treat more patient s. As mentione d, the rates of hospit al beds per population is one of the lowest among OECD countries. Rates of physic ians have declined and are exp ected to drop below the OECD average in the comin g decade [ 19 , 20 ]. There is a particular shortage of anesthesiolo - gist s and surgeons , ca using a bottlene ck for various pro- cedures , at lea st in the short-term [ 21 ]. Finally, a third explanation is that other compo nents of the hospital paymen t system, such as caps and subsid- ies , modify the incentives created by PRG payments. Caps on hospital income can deter hospitals from in- creasing activ ities beyond the ceiling. Retrospe ctive sub- sidies avert hospital collapse, but also reduce their fiscal responsibility, transferring the risk to the MoH. Subsid- ies may blur the effe cts of the PRG reform on hospital activities if they are not financially responsi ve. Feldhaus Fig. 3 ALoS, by type of wards Table 2 Results of DiD analysis DiD coefficient ( δ ) lndis lnALoS Model 1 Model 2 Model 1 Model 2 Estimate δ (CI) Estimate δ (CI) Estimate δ (CI) Estimate δ (CI) Wave1*period1 0.068 ( − 0.011 0.147) 0.068 ( − 0.011 0.147) 0.017 ( − 0.014 0.048) 0.017 ( − 0.014 0.048) Wave1*period2 0.026 ( − 0.141 0.193) 0.026 ( − 0.141 0.193) − 0.001 ( − 0.087 0.084) − 0.001 ( − 0.087 0.084) Wave2*period2 − 0.097 ( − 0.291 0.097) − 0.055 ( − 0.141 0.030) General surgery*period2 − 0.030 ( − 0.194 0.134) − 0.043 ( − 0.126 0.039) urology*period2 0.030 ( − 0.103 0.164) − 0.063 ( − 0.139 0.012) Ophthalmology*period2 − 0.151 ( − 0.307 0.005) − 0.025 ( − 0.105 0.054) head neck*period2 − 0.239* ( − 0.409 − 0.070) − 0.086* ( − 0.168 − 0.004) R Square 0.48 0.59 0.47 0.51 Number of cases 1828 1828 1828 1828 number of hospitals 29 29 29 29 Notes: lndis = natural logarithm of number of discharges , lnALoS = natural logarithm of average length of stay, wave 1 = orthopedic s, wave 2 = general surgery, urology, \ ’ / ophthalmology, head and neck surgery; period 1 = 2011 – 2013; period 2 = 2014 – 2015; CI = 95% Confidence Interval in parenthesis; * p < 0.05; ** p < 0.01. Regression OLS, clustered by ward. ALoS were weighted by ward size. Model 1 includes reform waves as predictors, model 2 includes each ward separately as predictors Waitzberg et al. BMC Health Services Research (2019) 19:292 Page 7 of 9 and Mathauer [ 22 ] also con clude that mixed or blended provider-payment mechanisms may restrain econ omic incentives. They stress that the effe ct s of payment reforms are highly contex t -specific. Our study adds to the literat ure on activity-based pay- ment and it s economic incentives. Diagnosis -related groups (DRGs) were origi nally de veloped in the US to incentivize hospitals to provide care more efficiently [ 23 ]. In the pa st two de cades, many countries have shifted to hospital pay- ment based on act ivity and ad opted DRGs as a payment me chanism to improve efficiency while limiting incentives for patient sele ction [ 6 ]. In ge neral, DRGs crea ted e conomic incentives to cut costs and shorten ALoS. In Western Euro- pean countries , DRGs also created incentives to ma ximize income by increa sing the volume of (profitable) activities. Y e t ,t h e r ei se v i d e n c et h a tD R G sa l s ol e dt od e c r e a s e dv o l - ume (USA) or unchanged volume (E astern European and Central A sian countries) [ 10 ]. Norton and colleagues [ 24 ] found, too, that overall, hosp ital ALoS did not de crea se in the US when Medicaid introduced a flat episode payment for psychiatric patient s in the 1 990s , replacing PD. Ou r findings add another ca se of a country where the shift to activity-ba sed payments did not s eem to contribute to changing volume or a shorter ALoS. Notwithstanding , the study has limitations that should be taken into account : 1 . Analysis on the wards le vel may not be sufficiently refined to capture t he effe cts of the reform. Currently, about a third of the activity in procedural wards is paid for by PRGs , which represent some 40% of the ward income. Possibly, an increa se of patient s with PRG-paid procedures in these wards w as compensated for by a reducti on in the number of patients treated with non-PR G-paid procedures. 2 . Wards are not a perfe ct proxy for medical area s be cause about 15% of discharg es are tr ansfers bet ween wards within a hospital, fur ther diluting the potential effe ct of the PRG reform on a specific ward. Since t he data were aggregated at the ward le vel, it wa s not possible to exclude the transf ers from the data set. Yet , the rate of transfers ha s remained constant over the study period, so the DiD analysis should overcome this limitation. 3 . T he study does not control for changes in population needs, preferences over time or the technological “ menu ” offered to pat ient s due to ageing and changes in the ca se-mi x. Howe ver , we believe that the DiD methodology overcomes the problem of ageing and c as e- mix c ha ng es as i t af fec ts a l l wa r ds s im il ar l y. Conclusions This is the first study to e valuate the impact of PRG reform in Israel on hospital activities , a s mea sured by the number of inpatient discharges and the ALoS on the national le vel. The study did not find any significant effect of the PRG reform on ward-aggregate hospital inpatient volum e or the ALoS . Howe ver , our inability to demonstrate a significant ef fect does not ne cessarily mean that the reform did not have any effect. A s noted in the discussion, there are plausible explanations for the finding. These include conflicting inc entives creat ed by budget caps and subs idies , comparat ively low PRG prices , and the limited capacity of hospitals to increa se their volume be cause of limited resourc es. Despite the counterint uitive e vidence generated by this study, the possible absence of an effe ct for the reform is interesting , and war rant s closer examination, be cause it has implicatio ns for bot h researchers and policym akers in Israel and in other countrie s. First, res earchers con- ducting cross -country analyses shou ld avoid simplistic assu mptions about the effect s of DRG-like pay ment component s on volume and length of stay; the incentives of such payment s are often modified by multiple , co-existing paym ent component s of a given national hospital paymen t system . Second, policymakers engaging in hospital paymen t reforms need to take into conside r - ation additional factors , such a s the national hospital market , available resources , othe r – potentially conflict- ing – payment compon ents , the various part ies involved and their interest s. More broadly speaking , unless pay - ment reforms are accompanied by further mea sures that allow providers to respond to the changed incen tives , e.g., by making available additional resources or allowing greater provi der autonomy, the reforms are unlike ly to lead to the intend ed changes. Abbreviations ALoS: Average length of stay; DiD: Differences-in-differences; DRG: Diagnosis- related group; FFS: Fee for service; GB: Global budgets; HP: Health plan; LoS: Length of stay; MoF: Ministry of Finance; MoH: Ministry of Health; NGO: Non-governmental organization; NHI: National Health Insurance; NII: National Insurance Institute; NIS: New Israeli Shekels;; OECD: Organizatio n for economic co-operation and development; PD: Per-diem; PRG: Proc edure- related group; USA: United States of America Acknowledgements We thank Ziona Haklay and Natalie Tuboul from the Ministry of Health for providing the data, Dimitri Romanov and Yaniv Reingewertz for the statistical consultation. We thank the reviewers Dr. Lina Maria Ellegård and Prof. Jon Magnussen for their valuable comments and sugge stions that helped improve this manuscript. Funding This work was supported by the Israel National Institute for Health Policy Research (NIHP grant number 77 – 16). The NIHP had no invol vement in the study design; in the collection, analysis and interpretation of data; in the writing of the report; or in the decision to submit the article for publication. The researchers are indepe ndent of the funder. Availability of data and materials The data that support the findings of this study are available from the Israeli Ministry of Health but restrictio ns apply to the availability of these data, which were used under licens e for the current study, and so are not publicly Waitzberg et al. BMC Health Services Research (2019) 19:292 Page 8 of 9 available. Data are however available from the authors upon reasonable request and with permission of the Israeli Ministry of Health. Authors ’ contributions RW acquired funding. RW, WQ, DG and RB contr ibuted to the conception of the study question and design. RW and VP collected the data, RW and ED analyzed the data. All the authors re vised the results critically and contributed all along with comments. RW drafted the manuscript, WQ, DG, SB and RB revised the manuscript. All authors have approved the final manuscript and are accountable for all aspects of the work in ensuri ng that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved. Ethics approval and consent to participate Not applicable. Consent for publication Not applicable. Competing interests VP is the ge nera l dire ctor of th e Mini str y of Heal th ’ s un it of plan ning , pricin g an d fun ding . Th e othe r aut hors de cl are th at they hav e no co mp etin g inte res ts. Publisher ’ sN o t e Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations. Author details 1 The Smokler Center for Health Policy Research, Myers-JDC-Brookdale Institute, JDC Hill, P.O.B. 3886, 91037 Jerusalem, Israel. 2 Department of Health Systems Management, School of Public Health, Faculty of Health Sciences, Ben-Gurion University of the Negev, Beer-Sheva, Israel. 3 Department of Health Care Management, Faculty of Economics & Managemen t, Technical University Berlin, Berlin, Germany. 4 European Observatory on Heal th Systems and Policies, Brussels, Belgium. 5 Planning, Budgeting and Pricing division, Ministry of Health, Jerusalem, Israel. 6 School of Public Health, University of Haifa, Haifa, Israel. Received: 19 October 2018 Accepted: 9 April 2019 References 1. Frank RG, Glazer J, McGuire TG. Measuring adverse selection in managed health care. J Health Econ. 2000;19(6):829 – 54. 2. Busse R. 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