| Literature DB >> 35023403 |
Anna Heath1,2,3, Petros Pechlivanoglou1,4.
Abstract
BACKGROUND: Clinical care is moving from a "one size fits all" approach to a setting in which treatment decisions are based on individual treatment response, needs, preferences, and risk. Research into personalized treatment strategies aims to discover currently unknown markers that identify individuals who would benefit from treatments that are nonoptimal at the population level. Before investing in research to identify these markers, it is important to assess whether such research has the potential to generate value. Thus, this article aims to develop a framework to prioritize research into the development of new personalized treatment strategies by creating a set of measures that assess the value of personalizing care based on a set of unknown patient characteristics.Entities:
Keywords: personalized medicine; precision medicine; research prioritization; simulation modeling; study design; value of heterogeneity; value of information
Mesh:
Year: 2022 PMID: 35023403 PMCID: PMC9189719 DOI: 10.1177/0272989X211072858
Source DB: PubMed Journal: Med Decis Making ISSN: 0272-989X Impact factor: 2.749
Figure 1The structure of the decision tree model comparing 2 treatment options for a hypothetical disease that causes a critical event to occur, adapted from Ades et al.
Population-level parameter values for our individual-level decision model comparing treatment to no treatment
| Parameter | Description | Value |
|---|---|---|
|
| Probability of the critical event without treatment | 0.4 |
|
| Probability of the critical event with treatment | 0.2 |
|
| Probability of side effects with treatment | 0.3 |
|
| Yearly QoL for healthy individuals | 1 |
|
| Yearly QoL detriment for individuals who experience the critical event | 0.5 |
|
| QoL detriment for individuals who experience side effects | 0.1 |
|
| Average yearly cost of treating the critical event |
|
|
| Variance in the yearly cost of treating the critical event |
|
|
| Average cost of treatment the side effects |
|
|
| Variance in the yearly cost of treating the side effects |
|
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| Cost of treatment |
|
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| Average length of remaining life in the model |
|
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| The willingness-to-pay for a unit of health |
|
QoL, quality of life.
How to Calculate the Value of Heterogeneity
|
|
| Opportunity Loss | |
|---|---|---|---|
| Individual 1 |
| 652 | 234 |
| Individual 2 |
| 1,298 | 2,381 |
| Individual 3 | 473 |
| 0 |
| Individual 4 |
| -319 | 6,837 |
| Individual 5 | 1,121 |
| 0 |
| Individual 6 |
| 4,875 | 10,220 |
| Individual 7 | 1,183 |
| 0 |
| Individual 8 | 6,686 |
| 0 |
| Individual 9 |
| 302 | 1,757 |
|
|
|
|
|
| Average | 4,660 |
| 2,143 |
The individual net monetary benefit for each treatment is tabulated. The opportunity loss of the population-level decision is the difference between the net monetary benefit of the individual-level optimal treatment and the net monetary benefit of the population level optimal treatment.
Figure 2The maximum value of heterogeneity plotted against the correlation between the net benefit across the 2 treatments for the Ades et al. example.
Figure 3The value of perfect outcome prediction (VPOP) for all outcomes in the modified Ades et al.10 example and the MVoH for comparison (black line). The VPOP for the duration of an individual's life (l) is represented by the blue dashed line. The VPOP for whether an individual experiences the critical event (Ic) is represented by the green dashed and dotted line. The VPOP for the cost of treating the critical event (cc) is represented by the red dotted line. Finally, the VPOP for whether an individual experiences side effects (Is) is represented by a purple cross and the VPOP for the cost of side effects (cs) is represented by a gray dot.
Figure 4A heat map displaying the value of subgroups for different values of the proportion reduction in the probability of a critical event ( ) and the size of the subgroup with the reduced probability of a critical event ( ). Darker gray indicates a low value for the subgroups and lighter gray/white indicates a high value. The black section indicates combinations of and that would result in a probability of the critical event in one of the subgroups that is greater than 1.