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Expert opinion (again)

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THis is the second video I was mentioning here — took a while to get out but it’s available now. I think you need to register here and then you can see our panel discussion. Like I said earlier, it was good fun and I think the actual session we did at ISPOR last year was, I think, very well received and it’s a shame that we can’t build on the momentum in the next R-HTA (which, I think, we’re going to have to postpone, given the COVID-19 emergency…).

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