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Differential Biases and Variabilities of Deep Learning-Based Artificial Intelligence and Human Experts in Clinical Diagnosis: Retrospective Cohort and Survey Study.
Cha, Dongchul; Pae, Chongwon; Lee, Se A; Na, Gina; Hur, Young Kyun; Lee, Ho Young; Cho, A Ra; Cho, Young Joon; Han, Sang Gil; Kim, Sung Huhn; Choi, Jae Young; Park, Hae-Jeong.
Afiliação
  • Cha D; Department of Otorhinolaryngology, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Pae C; Center for Systems and Translational Brain Sciences, Institute of Human Complexity and Systems Science, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Lee SA; Graduate School of Medical Science, Brain Korea 21 Project, Department of Nuclear Medicine, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Na G; Department of Otorhinolaryngology, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Hur YK; Department of Otorhinolaryngology, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Lee HY; Department of Otorhinolaryngology, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Cho AR; Department of Otorhinolaryngology, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Cho YJ; Department of Otorhinolaryngology, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Han SG; Department of Emergency Medicine, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Kim SH; Department of Emergency Medicine, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Choi JY; Department of Otorhinolaryngology, Yonsei University College of Medicine, Seoul, Republic of Korea.
  • Park HJ; Department of Otorhinolaryngology, Yonsei University College of Medicine, Seoul, Republic of Korea.
JMIR Med Inform ; 9(12): e33049, 2021 Dec 08.
Article em En | MEDLINE | ID: mdl-34889764
ABSTRACT

BACKGROUND:

Deep learning (DL)-based artificial intelligence may have different diagnostic characteristics than human experts in medical diagnosis. As a data-driven knowledge system, heterogeneous population incidence in the clinical world is considered to cause more bias to DL than clinicians. Conversely, by experiencing limited numbers of cases, human experts may exhibit large interindividual variability. Thus, understanding how the 2 groups classify given data differently is an essential step for the cooperative usage of DL in clinical application.

OBJECTIVE:

This study aimed to evaluate and compare the differential effects of clinical experience in otoendoscopic image diagnosis in both computers and physicians exemplified by the class imbalance problem and guide clinicians when utilizing decision support systems.

METHODS:

We used digital otoendoscopic images of patients who visited the outpatient clinic in the Department of Otorhinolaryngology at Severance Hospital, Seoul, South Korea, from January 2013 to June 2019, for a total of 22,707 otoendoscopic images. We excluded similar images, and 7500 otoendoscopic images were selected for labeling. We built a DL-based image classification model to classify the given image into 6 disease categories. Two test sets of 300 images were populated balanced and imbalanced test sets. We included 14 clinicians (otolaryngologists and nonotolaryngology specialists including general practitioners) and 13 DL-based models. We used accuracy (overall and per-class) and kappa statistics to compare the results of individual physicians and the ML models.

RESULTS:

Our ML models had consistently high accuracies (balanced test set mean 77.14%, SD 1.83%; imbalanced test set mean 82.03%, SD 3.06%), equivalent to those of otolaryngologists (balanced mean 71.17%, SD 3.37%; imbalanced mean 72.84%, SD 6.41%) and far better than those of nonotolaryngologists (balanced mean 45.63%, SD 7.89%; imbalanced mean 44.08%, SD 15.83%). However, ML models suffered from class imbalance problems (balanced test set mean 77.14%, SD 1.83%; imbalanced test set mean 82.03%, SD 3.06%). This was mitigated by data augmentation, particularly for low incidence classes, but rare disease classes still had low per-class accuracies. Human physicians, despite being less affected by prevalence, showed high interphysician variability (ML models kappa=0.83, SD 0.02; otolaryngologists kappa=0.60, SD 0.07).

CONCLUSIONS:

Even though ML models deliver excellent performance in classifying ear disease, physicians and ML models have their own strengths. ML models have consistent and high accuracy while considering only the given image and show bias toward prevalence, whereas human physicians have varying performance but do not show bias toward prevalence and may also consider extra information that is not images. To deliver the best patient care in the shortage of otolaryngologists, our ML model can serve a cooperative role for clinicians with diverse expertise, as long as it is kept in mind that models consider only images and could be biased toward prevalent diseases even after data augmentation.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Etiology_studies / Prognostic_studies / Risk_factors_studies Idioma: En Revista: JMIR Med Inform Ano de publicação: 2021 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies / Etiology_studies / Prognostic_studies / Risk_factors_studies Idioma: En Revista: JMIR Med Inform Ano de publicação: 2021 Tipo de documento: Article