Geschreven door studenten die geslaagd zijn Direct beschikbaar na je betaling Online lezen of als PDF Verkeerd document? Gratis ruilen 4,6 TrustPilot
logo-home
Tentamen (uitwerkingen)

Semantic Representation of Consumer Questions and Physician Provided Answers

Beoordeling
-
Verkocht
-
Pagina's
42
Cijfer
A+
Geüpload op
04-08-2024
Geschreven in
2024/2025

Identifying and coding relationship instances proceeded in two steps. Step1. Step2. Step3. Create a conceptual graph (XXX or concept map, check Sowa’s book on exact definition of conceptual graph) representing the concepts an relationships in a question or answer. XXX need a picture here Code the relationship instances shown in the graph. Regenerate the conceptual graphs based on the coded relationship instances to check for errors and further analyze the characteristics of the inter-connections between the many concepts in each text. We used the relationship types found in the UMLS Semantic Network, adapting them as needed (sometimes consulting other sources) to capture the perceived meaning behind the textual data. The final list of semantic relationship types is shown in Table 2. The relationships turned out to have multiple arguments, so frames with multiple slots are a suitable representation. We constructed, reviewed, and revised slot names for the frames during coding iterations. We used Protégé (XXX citation) to manage the frame classes and instanc

Meer zien Lees minder
Instelling
Semantic Representation Of Consumer
Vak
Semantic Representation of Consumer

Voorbeeld van de inhoud

Slaughter Semantic Representation of Health Texts
Page 1 of 42


Slaughter, L. A., Soergel, D., & Rindflesch, T. C. (January 01, 2006). Semantic representation of consumer questions and physician
answers. International Journal of Medical Informatics, 75, 7, 513-29. Available at
http://www.sciencedirect.com/science/article/pii/S1386505605001401
Semantic Representation of Consumer Questions and Physician Provided Answers


Authors: Laura A. Slaughter, PhDa
Dagobert Soergel, PhDb
Thomas C. Rindflesch, PhDc
a
Affiliation: Department of Biomedical Informatics, Columbia University, New York, NY
b
College of Information Studies, University of Maryland, College Park, MD
c
National Library of Medicine, Bethesda, MD




Corresponding author:
Laura A. Slaughter, PhD
Department of Biomedical Informatics
Columbia University
622 West 168th Street, VC-5
New York, New York 10032-3720 USA
Office: 212-305-6940
FAX: 212-305-3302
E-mail address:

,Slaughter Semantic Representation of Health Texts
Page 2 of 42

ABSTRACT

Objective: The aim of this study was to identify the semantic relationships in health consumers’

questions, physicians’ answers and between questions and answers to lay the foundation for

intelligent systems that support health consumers in finding and understanding medical

information

Methods: We manually identified semantic relationship instances within twelve question-answer

pairs from Ask-the-Physician Web sites based on the relationship types and structure of the

Unified Medical Language System (UMLS) Semantic Network as the starter relationship

inventory. We calculated the frequency of occurrence of each semantic relationship class.

Conceptual graphs [XXX or concept maps] were generated, joining concepts together through

the semantic relationships identified. We then analyzed whether representations of physician’s

answers exactly match the form of the question representations. Lastly, we examined

characteristics of physician answer conceptual graphs.

Results: We identified 97 relationship instances in the questions and 334 relationship instances

in the answers. The most frequently identified relationship type in both questions and answers is

brings_about (causal). We examined the relationship instances in the answers that contain a

concept also expressed in the question and found that they most often use the following

relationship types: brings_about, isa, co_occurs_with, diagnoses, and treats. 74% of the

relationship instances identified in the answers did not contain a concept expressed in the

question. For each answer, these relationship instances formed large graphs that contain a “focal

point” concept that usually occurs also in the question [XXX make sure this is correct] having

numerous semantic relationships connecting to concepts not expressed in question.

,Slaughter Semantic Representation of Health Texts
Page 3 of 42

Conclusion: We observed that the interconnecting patterns in semantic representations of

questions and answers possess specific characteristics that can be exploited for improvement of

retrieval strategy. For example, we determined that both consumers and physicians often express

causative relationships and these play a key role in leading to further related concepts.

Keywords: Semantic Processing, Public Health, Unified Medical Language System, Information

Retrieval, Natural Language Processing

, Slaughter Semantic Representation of Health Texts
Page 4 of 42

1. INTRODUCTION

Recent research in medical information processing has focused on health care consumers.

These users often experience frustration while seeking online information [1,2,3], due to their

lack of understanding of medical concepts and unfamiliarity with effective search strategies.

Semantic relationships provide a way of addressing these issues. Semantic information can guide

the user by suggesting concepts not overtly expressed in an initial query. For example, imagine

that a user asks an online question-answering system whether exercise helps prevent osteoporosis

and, after receiving an initial answer, wishes to obtain more information. The semantic

relationship prevents in the proposition representing the question, namely “exercise prevents

osteoporosis”, can support this effort; prevents might be used with osteoporosis to determine

additional ways of preventing this disorder.

This paper presents an analysis of semantic relationships that were manually extracted

from questions asked by health consumers and from the answers provided by physicians as found

on Ask-a-Doctor Web sites. The Semantic Network from the Unified Medical Language System

(UMLS) [4,5] served as version 0 of an inventory of semantic relationship types which was

modified in the course of coding relationship types identified in the health consumer texts.

A simple frequency analysis of occurrence of semantic relationships in all texts leads into

an investigation of patterns within questions and within answers and finally patterns of semantic

relationships that connect the two. Patterns of semantic relationships within answers are of

interest since they provide a useful start for constructing query strategies involving semantic

information. The implied relationships linking questions to answers provide a basis for

identifying external knowledge necessary to understand answers.

Geschreven voor

Instelling
Semantic Representation of Consumer
Vak
Semantic Representation of Consumer

Documentinformatie

Geüpload op
4 augustus 2024
Aantal pagina's
42
Geschreven in
2024/2025
Type
Tentamen (uitwerkingen)
Bevat
Vragen en antwoorden

Onderwerpen

$13.49
Krijg toegang tot het volledige document:

Verkeerd document? Gratis ruilen Binnen 14 dagen na aankoop en voor het downloaden kun je een ander document kiezen. Je kunt het bedrag gewoon opnieuw besteden.
Geschreven door studenten die geslaagd zijn
Direct beschikbaar na je betaling
Online lezen of als PDF

Maak kennis met de verkoper

Seller avatar
De reputatie van een verkoper is gebaseerd op het aantal documenten dat iemand tegen betaling verkocht heeft en de beoordelingen die voor die items ontvangen zijn. Er zijn drie niveau’s te onderscheiden: brons, zilver en goud. Hoe beter de reputatie, hoe meer de kwaliteit van zijn of haar werk te vertrouwen is.
StudyCenter1 Teachme2-tutor
Volgen Je moet ingelogd zijn om studenten of vakken te kunnen volgen
Verkocht
227
Lid sinds
2 jaar
Aantal volgers
91
Documenten
3850
Laatst verkocht
1 week geleden
Nursing school is hard! Im here to simply the information and make it easier!

My mission is to be your LIGHT in the dark. If you"re worried or having trouble in nursing school, I really want my notes to be your guide! I know they have helped countless others get through and thats all i want for YOU! Stay with me and you will find everything you need to study and pass any tests,quizzes abd exams!

4.3

28 beoordelingen

5
18
4
4
3
4
2
0
1
2

Recent door jou bekeken

Waarom studenten kiezen voor Stuvia

Gemaakt door medestudenten, geverifieerd door reviews

Kwaliteit die je kunt vertrouwen: geschreven door studenten die slaagden en beoordeeld door anderen die dit document gebruikten.

Niet tevreden? Kies een ander document

Geen zorgen! Je kunt voor hetzelfde geld direct een ander document kiezen dat beter past bij wat je zoekt.

Betaal zoals je wilt, start meteen met leren

Geen abonnement, geen verplichtingen. Betaal zoals je gewend bent via iDeal of creditcard en download je PDF-document meteen.

Student with book image

“Gekocht, gedownload en geslaagd. Zo makkelijk kan het dus zijn.”

Alisha Student

Bezig met je bronvermelding?

Maak nauwkeurige citaten in APA, MLA en Harvard met onze gratis bronnengenerator.

Bezig met je bronvermelding?

Veelgestelde vragen