A key assumption of the state transition model is that progression-free survival is an appropriate surrogate for overall survival. This is because the model is driven by multiple lines of progression-free survival to generate survival and quality-adjusted survival outcomes. So the model requires a surrogate relationship between progression-free survival at each line and overall survival to exist. The committee considered that the available evidence in the literature supported the assumption of surrogacy between progression-free survival and overall survival. But the mechanism of action of some treatments meant that the assumption was sometimes limited. For example, nivolumab plus ipilimumab was seen to have worse progression-free survival in CheckMate 214 than other combination treatments in their pivotal trials, but still has a sustained survival benefit. When considering the most recent publicly available data cut, nivolumab plus ipilimumab had a median progression-free survival of 12.3 months (Motzer et al. 2022) compared with 23.9 months for lenvatinib plus pembrolizumab (see the EAG's assessment report table 14). But, when considering overall survival, this translated to a median overall survival of 55.7 months for nivolumab plus ipilimumab compared with 53.7 months for lenvatinib plus pembrolizumab (see the EAG's assessment report table 13). The EAG explained that this could be caused by tumour flare or pseudoprogression. This is when tumours increase in size in the initial stages of treatment, resulting in a progression event being recorded, before falling in size as the full treatment effect is realised. No evidence of pseudoprogression was identified for nivolumab plus ipilimumab in RCC. But given evidence for this in melanoma and the large difference between observed time to next treatment and progression-free survival in CheckMate 214, the EAG considered it a plausible reason. Alternatively, the potential lack of surrogacy between progression-free survival and overall survival may be because the definition of progression used in CheckMate 214 was different to other trials (investigator assessed compared with independent assessed). Clinical experts explained that pseudoprogression is often discussed when considering immuno-oncology (IO) treatments. They would not expect pseudoprogression to have a major impact on the outcomes for nivolumab plus ipilimumab. They explained that time to next treatment as an outcome is difficult for nivolumab plus ipilimumab because people can get multiple treatment-free intervals when they have not come off treatment entirely and still have benefit before resuming treatment. The clinical experts explained that, because nivolumab plus ipilimumab has a different mechanism of action to the IO-TKI combinations, they would expect outcomes to differ. The experts explained that, because of the differences in modes of action, they expect IO-IO combinations to have worse progression-free survival but better overall survival and IO-TKI combinations to have better progression-free survival, but this would not be translated to similarly sized overall survival gains. The clinical experts acknowledged that it would be difficult to program one model that could capture the benefits of both combination classes. The committee observed that predictions for overall survival generated by the state transition model for nivolumab plus ipilimumab were more pessimistic than those observed in CheckMate 214 and data from the NHS systemic anticancer therapy (SACT) database. This could have been driven by the breakdown of surrogacy between progression-free survival and overall survival for this technology. This was less of an issue when using the partitioned survival method in scenarios because it uses overall survival data directly. This allows the survival benefit seen in CheckMate 214 to be captured. The committee acknowledged that a partitioned survival modelling approach has limitations compared with a state transition approach. These include reduced flexibility, limited ability to capture later-line costs and benefits, and the need to make other strong assumptions that could lead to additional uncertainty. The EAG also presented a scenario in which time to next treatment was used as a proxy for progression-free survival for nivolumab plus ipilimumab in the progression-free survival network meta-analysis. The EAG argued that, while imperfect, using time to next treatment might better reflect overall survival expected for nivolumab plus ipilimumab given poor surrogacy between progression-free survival and overall survival. The EAG explained that, when time to next treatment is used, the extrapolation fit well to the observed overall survival for nivolumab plus ipilimumab in the real-world evidence. The committee considered that, when there is evidence of poor surrogacy between progression-free survival and overall survival for a treatment in the model, alternative ways of driving health state occupancy should be explored. The committee explained that the EAG time to next treatment scenario was imperfect but provided an additional point of evidence for consideration. It considered that the EAG base case using progression-free survival is likely to underestimate expected overall survival for nivolumab plus ipilimumab. The committee explained that the time to next treatment scenario predicted better overall survival for nivolumab plus ipilimumab, and outcomes more in line with clinical expectations. The committee concluded that overall survival for nivolumab plus ipilimumab likely fell between the EAG base case and the time to next treatment scenario, and both were important analyses to consider.