Literature DB >> 33691000

Selection of trustworthy crowd workers for telemedical diagnosis of pediatric autism spectrum disorder.

Peter Washington1, Emilie Leblanc, Kaitlyn Dunlap, Yordan Penev, Maya Varma, Jae-Yoon Jung, Brianna Chrisman, Min Woo Sun, Nathaniel Stockham, Kelley Marie Paskov, Haik Kalantarian, Catalin Voss, Nick Haber, Dennis P Wall.   

Abstract

Crowd-powered telemedicine has the potential to revolutionize healthcare, especially during times that require remote access to care. However, sharing private health data with strangers from around the world is not compatible with data privacy standards, requiring a stringent filtration process to recruit reliable and trustworthy workers who can go through the proper training and security steps. The key challenge, then, is to identify capable, trustworthy, and reliable workers through high-fidelity evaluation tasks without exposing any sensitive patient data during the evaluation process. We contribute a set of experimentally validated metrics for assessing the trustworthiness and reliability of crowd workers tasked with providing behavioral feature tags to unstructured videos of children with autism and matched neurotypical controls. The workers are blinded to diagnosis and blinded to the goal of using the features to diagnose autism. These behavioral labels are fed as input to a previously validated binary logistic regression classifier for detecting autism cases using categorical feature vectors. While the metrics do not incorporate any ground truth labels of child diagnosis, linear regression using the 3 correlative metrics as input can predict the mean probability of the correct class of each worker with a mean average error of 7.51% for performance on the same set of videos and 10.93% for performance on a distinct balanced video set with different children. These results indicate that crowd workers can be recruited for performance based largely on behavioral metrics on a crowdsourced task, enabling an affordable way to filter crowd workforces into a trustworthy and reliable diagnostic workforce.

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Mesh:

Year:  2021        PMID: 33691000      PMCID: PMC7958981     

Source DB:  PubMed          Journal:  Pac Symp Biocomput        ISSN: 2335-6928


  37 in total

1.  A Mobile Game for Automatic Emotion-Labeling of Images.

Authors:  Haik Kalantarian; Khaled Jedoui; Peter Washington; Dennis P Wall
Journal:  IEEE Trans Games       Date:  2018-10-22

2.  The Prevalence of Parent-Reported Autism Spectrum Disorder Among US Children.

Authors:  Michael D Kogan; Catherine J Vladutiu; Laura A Schieve; Reem M Ghandour; Stephen J Blumberg; Benjamin Zablotsky; James M Perrin; Paul Shattuck; Karen A Kuhlthau; Robin L Harwood; Michael C Lu
Journal:  Pediatrics       Date:  2018-12       Impact factor: 7.124

3.  Clinical Evaluation of a Novel and Mobile Autism Risk Assessment.

Authors:  Marlena Duda; Jena Daniels; Dennis P Wall
Journal:  J Autism Dev Disord       Date:  2016-06

4.  Use of machine learning for behavioral distinction of autism and ADHD.

Authors:  M Duda; R Ma; N Haber; D P Wall
Journal:  Transl Psychiatry       Date:  2016-02-09       Impact factor: 6.222

5.  Exploratory study examining the at-home feasibility of a wearable tool for social-affective learning in children with autism.

Authors:  Jena Daniels; Jessey N Schwartz; Catalin Voss; Nick Haber; Azar Fazel; Aaron Kline; Peter Washington; Carl Feinstein; Terry Winograd; Dennis P Wall
Journal:  NPJ Digit Med       Date:  2018-08-02

6.  Detecting Developmental Delay and Autism Through Machine Learning Models Using Home Videos of Bangladeshi Children: Development and Validation Study.

Authors:  Qandeel Tariq; Scott Lanyon Fleming; Jessey Nicole Schwartz; Kaitlyn Dunlap; Conor Corbin; Peter Washington; Haik Kalantarian; Naila Z Khan; Gary L Darmstadt; Dennis Paul Wall
Journal:  J Med Internet Res       Date:  2019-04-24       Impact factor: 5.428

7.  Validity of Online Screening for Autism: Crowdsourcing Study Comparing Paid and Unpaid Diagnostic Tasks.

Authors:  Peter Washington; Haik Kalantarian; Qandeel Tariq; Jessey Schwartz; Kaitlyn Dunlap; Brianna Chrisman; Maya Varma; Michael Ning; Aaron Kline; Nathaniel Stockham; Kelley Paskov; Catalin Voss; Nick Haber; Dennis Paul Wall
Journal:  J Med Internet Res       Date:  2019-05-23       Impact factor: 5.428

8.  Virtual Reality Support for Joint Attention Using the Floreo Joint Attention Module: Usability and Feasibility Pilot Study.

Authors:  Vijay Ravindran; Monica Osgood; Vibha Sazawal; Rita Solorzano; Sinan Turnacioglu
Journal:  JMIR Pediatr Parent       Date:  2019-09-30

9.  Precision Telemedicine through Crowdsourced Machine Learning: Testing Variability of Crowd Workers for Video-Based Autism Feature Recognition.

Authors:  Peter Washington; Emilie Leblanc; Kaitlyn Dunlap; Yordan Penev; Aaron Kline; Kelley Paskov; Min Woo Sun; Brianna Chrisman; Nathaniel Stockham; Maya Varma; Catalin Voss; Nick Haber; Dennis P Wall
Journal:  J Pers Med       Date:  2020-08-13

10.  The Performance of Emotion Classifiers for Children With Parent-Reported Autism: Quantitative Feasibility Study.

Authors:  Haik Kalantarian; Khaled Jedoui; Kaitlyn Dunlap; Jessey Schwartz; Peter Washington; Arman Husic; Qandeel Tariq; Michael Ning; Aaron Kline; Dennis Paul Wall
Journal:  JMIR Ment Health       Date:  2020-04-01
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  7 in total

1.  Training Affective Computer Vision Models by Crowdsourcing Soft-Target Labels.

Authors:  Peter Washington; Haik Kalantarian; Jack Kent; Arman Husic; Aaron Kline; Emilie Leblanc; Cathy Hou; Cezmi Mutlu; Kaitlyn Dunlap; Yordan Penev; Nate Stockham; Brianna Chrisman; Kelley Paskov; Jae-Yoon Jung; Catalin Voss; Nick Haber; Dennis P Wall
Journal:  Cognit Comput       Date:  2021-09-27       Impact factor: 4.890

2.  Crowd annotations can approximate clinical autism impressions from short home videos with privacy protections.

Authors:  Peter Washington; Brianna Chrisman; Emilie Leblanc; Kaitlyn Dunlap; Aaron Kline; Cezmi Mutlu; Nate Stockham; Kelley Paskov; Dennis Paul Wall
Journal:  Intell Based Med       Date:  2022-04-08

3.  Classifying Autism From Crowdsourced Semistructured Speech Recordings: Machine Learning Model Comparison Study.

Authors:  Nathan A Chi; Peter Washington; Aaron Kline; Arman Husic; Cathy Hou; Chloe He; Kaitlyn Dunlap; Dennis P Wall
Journal:  JMIR Pediatr Parent       Date:  2022-04-14

4.  Crowdsourced privacy-preserved feature tagging of short home videos for machine learning ASD detection.

Authors:  Peter Washington; Qandeel Tariq; Emilie Leblanc; Brianna Chrisman; Kaitlyn Dunlap; Aaron Kline; Haik Kalantarian; Yordan Penev; Kelley Paskov; Catalin Voss; Nathaniel Stockham; Maya Varma; Arman Husic; Jack Kent; Nick Haber; Terry Winograd; Dennis P Wall
Journal:  Sci Rep       Date:  2021-04-07       Impact factor: 4.379

5.  Identification of Social Engagement Indicators Associated With Autism Spectrum Disorder Using a Game-Based Mobile App: Comparative Study of Gaze Fixation and Visual Scanning Methods.

Authors:  Maya Varma; Peter Washington; Brianna Chrisman; Aaron Kline; Emilie Leblanc; Kelley Paskov; Nate Stockham; Jae-Yoon Jung; Min Woo Sun; Dennis P Wall
Journal:  J Med Internet Res       Date:  2022-02-15       Impact factor: 7.076

6.  Improved Digital Therapy for Developmental Pediatrics Using Domain-Specific Artificial Intelligence: Machine Learning Study.

Authors:  Peter Washington; Haik Kalantarian; John Kent; Arman Husic; Aaron Kline; Emilie Leblanc; Cathy Hou; Onur Cezmi Mutlu; Kaitlyn Dunlap; Yordan Penev; Maya Varma; Nate Tyler Stockham; Brianna Chrisman; Kelley Paskov; Min Woo Sun; Jae-Yoon Jung; Catalin Voss; Nick Haber; Dennis Paul Wall
Journal:  JMIR Pediatr Parent       Date:  2022-04-08

7.  Machine learning models using mobile game play accurately classify children with autism.

Authors:  Nicholas Deveau; Peter Washington; Emilie Leblanc; Arman Husic; Kaitlyn Dunlap; Yordan Penev; Aaron Kline; Onur Cezmi Mutlu; Dennis P Wall
Journal:  Intell Based Med       Date:  2022-08-24
  7 in total

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