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| Source: | Contracts Finder |
| Buyer: | Midlands & Lancashire C S U |
| Main Category: | Services |
| Procurement Method: | Other - Quotation |
| Tender Status: | Complete |
| Estimated Value (ex. VAT): | £43,000 |
| Release Date: | 29 November 2022 |
| Application Deadline: | 31 May 2022 |
In brief, a range of COPD treatments will be characterised by their component features, known as attributes. Each attribute will then be represented by a range of options, known as levels. These attributes and levels can be formulated into a range of different scenarios, each of which represents a different combination of levels for each attribute. Respondents are asked to make a series of choices within scenario sets and, through their choices, inferences can be made about their relative preferences across attributes/levels. While respondents are only subjected to a small number of possible combinations of these levels, Bayesian statistical methods can be applied to determine the impact on treatment preference for any combination of attribute levels. A first step of the DCE is to define the most relevant attributes for relevant COPD treatment/ management strategies and, for each attribute, to define the levels to be tested. It is recommended to use a maximum of eight attributes with two to three levels. With more than 8 attributes, there is a risk that respondents start to use simplifying heuristics to answer questions and they will typically only focus on 2-3 attributes important to themselves when making choices between scenarios, thereby potentially reducing the robustness of the results.
Pipeline status
Not addedContract imported automatically · AI writes the response
Application Deadline
31 May 2022
Closed
Estimated Value
£43,000
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Book a free consultation →| Procurement ID (OCID): | ocds-b5fd17-5333d64c-da9c-4548-afaf-aa5f3e6b7155 |
| Notice Reference: | d25a385b-be67-4a7b-bc22-7eb1939a8ce7-594301 |
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