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ITEM RESPONSE MODELING OF PRESENCE-SEVERITY ITEMS: APPLICATION TO MEASUREMENT OF PATIENT- REPORTED OUTCOMES Ying Liu and Jay Verkuilen

ITEM RESPONSE MODELING OF PRESENCE-SEVERITY ITEMS: APPLICATION TO MEASUREMENT OF PATIENT-REPORTED OUTCOMES Ying Liu and Jay Verkuilen

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ITEM RESPONSE MODELING OF PRESENCE-SEVERITY ITEMS: APPLICATION TO MEASUREMENT OF PATIENT-REPORTED OUTCOMES

Ying Liu and Jay Verkuilen

Outline

Introduction A framework for P-S items Nominal response model Example Comments

Introduction

The Presence-Severity (P-S) format uses a compound item to assess an event, such as occurrence of a symptom.

P-S items come in two parts: A filter, the presence part, is used to check

whether the respondent experiences the particular event in question.

The Severity part is often about the frequency, density, severity, or impact of the event.

Introduction

Example: Presence

In the last week, did you have dry mouth? (yes/no)

Severity If yes, how much did it bother you? (not at all/a

little/somewhat/a lot)

Introduction

What is a meaningful internal consistency reliability for the scale (or information curve)?

Are there items that do not behave appropriately given reasonable assumptions about the response process, in particular that lack of Presence should imply no Severity?

Is the format desirable or would it make sense to revise to a different format?

Introduction

To combine the parts by appending the P part to be the bottom category of the S part, then a classical test theory reliability coefficient could be computed.

Only to analyze the P component by using a binary IRT model and ignoring the S part.

GRM or GPCM are considered to analyze P-S items.

Using Bock’s (1972) nominal response model (NRM) to analyze the P-S formats.

Introduction

Investigating the necessity of the P-S format, especially in comparison of competing designs.

Examining the separation of the Presence and the Severity parts of the structure.

Using data from the Memorial Symptom Assessment Scale-Short Form (MSAS-SF), a widely used P-S format instrument to assess symptom distress in hospital patients.

A Framework for P-S Items

A Framework for P-S Items

A Framework for P-S Items

A Framework for P-S Items

P=2 p20

p21

Nominal Response Model (NRM)

a: category severity c: relevant to the base rate of endorsing

the category

Nominal Response Model (NRM) d10=a1-a0 reflects whether the P part is

distinct from the bottom category of the S part.

If a1>a0, the P part is distinguished from the bottom category of the S part.

If a1<a0, the ordering required to append the filter item to the bottom of the S is not met.

Example

Using MSAS-SF to assess symptom distress for cancer patients.

For each symptom, respondents are asked a “yes/no” question on whether they have had the symptom in the past 2 weeks.

Respondents who report to have the symptom are further asked to evaluate “how much did it bother or distress you” for the physical items and “how often did it occur” for psychological items.

Example

Example

Example

Example

Example

Example

Comment & Question

It may generate a compound item with many categories. [14]

It was discussed that P-S format item may not be efficient and informative and thus should consider to abandon them. [14]

Is it more convenient to compose a questionnaire using compound items?

Will the use a1/ ao instead (a1-a2)more suitable parameter for judgment? [7]

Comment & Question

Only a latent trait was involved in the present analysis. It is pity that the authors did not explain what is measured in the NRM. Obviously the nature of q is neither the health level (presence of physical/psychological symptoms) nor the frequency of falling ill (severity of physical/psychological symptoms).

We should try to use multidimentional or higher order IRT to trait this P-S format. I mean we can let P part as one latent trait and S part as another. [3]

Comment & Question

Maybe the models used to fit the mixed-type items can be used in the future, such as the mixed-type model is the combination of the 3PLM (for dichotomous items) and the NRM or GPCM (for polytomous items).

Thank you for your attention