Cargando…
A Novel Intelligent Scan Assistant System for Early Pregnancy Diagnosis by Ultrasound: Clinical Decision Support System Evaluation Study
BACKGROUND: Early pregnancy ultrasound scans are usually performed by nonexpert examiners in obstetrics/gynecology (OB/GYN) emergency departments. Establishing the precise diagnosis of pregnancy location is key for appropriate management of early pregnancies, and experts are usually able to locate a...
Autores principales: | , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
JMIR Publications
2019
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6636237/ https://www.ncbi.nlm.nih.gov/pubmed/31271152 http://dx.doi.org/10.2196/14286 |
_version_ | 1783436032477233152 |
---|---|
author | Dhombres, Ferdinand Maurice, Paul Guilbaud, Lucie Franchinard, Loriane Dias, Barbara Charlet, Jean Blondiaux, Eléonore Khoshnood, Babak Jurkovic, Davor Jauniaux, Eric Jouannic, Jean-Marie |
author_facet | Dhombres, Ferdinand Maurice, Paul Guilbaud, Lucie Franchinard, Loriane Dias, Barbara Charlet, Jean Blondiaux, Eléonore Khoshnood, Babak Jurkovic, Davor Jauniaux, Eric Jouannic, Jean-Marie |
author_sort | Dhombres, Ferdinand |
collection | PubMed |
description | BACKGROUND: Early pregnancy ultrasound scans are usually performed by nonexpert examiners in obstetrics/gynecology (OB/GYN) emergency departments. Establishing the precise diagnosis of pregnancy location is key for appropriate management of early pregnancies, and experts are usually able to locate a pregnancy in the first scan. A decision-support system based on a semantic, expert-validated knowledge base may improve the diagnostic performance of nonexpert examiners for early pregnancy transvaginal ultrasound. OBJECTIVE: This study aims to evaluate a novel Intelligent Scan Assistant System for early pregnancy ultrasound to diagnose the pregnancy location and determine the image quality. METHODS: Two trainees performed virtual transvaginal ultrasound examinations of early pregnancy cases with and without the system. The ultrasound images and reports were blindly reviewed by two experts using scoring methods. A diagnosis of pregnancy location and ultrasound image quality were compared between scans performed with and without the system. RESULTS: Each trainee performed a virtual vaginal examination for all 32 cases with and without use of the system. The analysis of the 128 resulting scans showed higher quality of the images (quality score: +23%; P<.001), less images per scan (4.6 vs 6.3 [without the CDSS]; P<.001), and higher confidence in reporting conclusions (trust score: +20%; P<.001) with use of the system. Further, use of the system cost an additional 8 minutes per scan. We observed a correct diagnosis of pregnancy location in 39 (61%) and 52 (81%) of 64 scans in the nonassisted mode and assisted mode, respectively. Additionally, an exact diagnosis (with precise ectopic location) was made in 30 (47%) and 49 (73%) of the 64 scans without and with use of the system, respectively. These differences in diagnostic performance (+20% for correct location diagnosis and +30% for exact diagnosis) were both statistically significant (P=.002 and P<.001, respectively). CONCLUSIONS: The Intelligent Scan Assistant System is based on an expert-validated knowledge base and demonstrates significant improvement in early pregnancy scanning, both in diagnostic performance (pregnancy location and precise diagnosis) and scan quality (selection of images, confidence, and image quality). |
format | Online Article Text |
id | pubmed-6636237 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2019 |
publisher | JMIR Publications |
record_format | MEDLINE/PubMed |
spelling | pubmed-66362372019-07-30 A Novel Intelligent Scan Assistant System for Early Pregnancy Diagnosis by Ultrasound: Clinical Decision Support System Evaluation Study Dhombres, Ferdinand Maurice, Paul Guilbaud, Lucie Franchinard, Loriane Dias, Barbara Charlet, Jean Blondiaux, Eléonore Khoshnood, Babak Jurkovic, Davor Jauniaux, Eric Jouannic, Jean-Marie J Med Internet Res Original Paper BACKGROUND: Early pregnancy ultrasound scans are usually performed by nonexpert examiners in obstetrics/gynecology (OB/GYN) emergency departments. Establishing the precise diagnosis of pregnancy location is key for appropriate management of early pregnancies, and experts are usually able to locate a pregnancy in the first scan. A decision-support system based on a semantic, expert-validated knowledge base may improve the diagnostic performance of nonexpert examiners for early pregnancy transvaginal ultrasound. OBJECTIVE: This study aims to evaluate a novel Intelligent Scan Assistant System for early pregnancy ultrasound to diagnose the pregnancy location and determine the image quality. METHODS: Two trainees performed virtual transvaginal ultrasound examinations of early pregnancy cases with and without the system. The ultrasound images and reports were blindly reviewed by two experts using scoring methods. A diagnosis of pregnancy location and ultrasound image quality were compared between scans performed with and without the system. RESULTS: Each trainee performed a virtual vaginal examination for all 32 cases with and without use of the system. The analysis of the 128 resulting scans showed higher quality of the images (quality score: +23%; P<.001), less images per scan (4.6 vs 6.3 [without the CDSS]; P<.001), and higher confidence in reporting conclusions (trust score: +20%; P<.001) with use of the system. Further, use of the system cost an additional 8 minutes per scan. We observed a correct diagnosis of pregnancy location in 39 (61%) and 52 (81%) of 64 scans in the nonassisted mode and assisted mode, respectively. Additionally, an exact diagnosis (with precise ectopic location) was made in 30 (47%) and 49 (73%) of the 64 scans without and with use of the system, respectively. These differences in diagnostic performance (+20% for correct location diagnosis and +30% for exact diagnosis) were both statistically significant (P=.002 and P<.001, respectively). CONCLUSIONS: The Intelligent Scan Assistant System is based on an expert-validated knowledge base and demonstrates significant improvement in early pregnancy scanning, both in diagnostic performance (pregnancy location and precise diagnosis) and scan quality (selection of images, confidence, and image quality). JMIR Publications 2019-07-03 /pmc/articles/PMC6636237/ /pubmed/31271152 http://dx.doi.org/10.2196/14286 Text en ©Ferdinand Dhombres, Paul Maurice, Lucie Guilbaud, Loriane Franchinard, Barbara Dias, Jean Charlet, Eléonore Blondiaux, Babak Khoshnood, Davor Jurkovic, Eric Jauniaux, Jean-Marie Jouannic. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 03.07.2019. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on http://www.jmir.org/, as well as this copyright and license information must be included. |
spellingShingle | Original Paper Dhombres, Ferdinand Maurice, Paul Guilbaud, Lucie Franchinard, Loriane Dias, Barbara Charlet, Jean Blondiaux, Eléonore Khoshnood, Babak Jurkovic, Davor Jauniaux, Eric Jouannic, Jean-Marie A Novel Intelligent Scan Assistant System for Early Pregnancy Diagnosis by Ultrasound: Clinical Decision Support System Evaluation Study |
title | A Novel Intelligent Scan Assistant System for Early Pregnancy Diagnosis by Ultrasound: Clinical Decision Support System Evaluation Study |
title_full | A Novel Intelligent Scan Assistant System for Early Pregnancy Diagnosis by Ultrasound: Clinical Decision Support System Evaluation Study |
title_fullStr | A Novel Intelligent Scan Assistant System for Early Pregnancy Diagnosis by Ultrasound: Clinical Decision Support System Evaluation Study |
title_full_unstemmed | A Novel Intelligent Scan Assistant System for Early Pregnancy Diagnosis by Ultrasound: Clinical Decision Support System Evaluation Study |
title_short | A Novel Intelligent Scan Assistant System for Early Pregnancy Diagnosis by Ultrasound: Clinical Decision Support System Evaluation Study |
title_sort | novel intelligent scan assistant system for early pregnancy diagnosis by ultrasound: clinical decision support system evaluation study |
topic | Original Paper |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6636237/ https://www.ncbi.nlm.nih.gov/pubmed/31271152 http://dx.doi.org/10.2196/14286 |
work_keys_str_mv | AT dhombresferdinand anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT mauricepaul anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT guilbaudlucie anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT franchinardloriane anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT diasbarbara anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT charletjean anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT blondiauxeleonore anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT khoshnoodbabak anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT jurkovicdavor anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT jauniauxeric anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT jouannicjeanmarie anovelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT dhombresferdinand novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT mauricepaul novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT guilbaudlucie novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT franchinardloriane novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT diasbarbara novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT charletjean novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT blondiauxeleonore novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT khoshnoodbabak novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT jurkovicdavor novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT jauniauxeric novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy AT jouannicjeanmarie novelintelligentscanassistantsystemforearlypregnancydiagnosisbyultrasoundclinicaldecisionsupportsystemevaluationstudy |