Abstract

BackgroundRecently, the Turing test has been used to investigate whether machines have intelligence similar to humans. Our study aimed to assess the ability of an artificial intelligence (AI) system for spine tumor detection using the Turing test.MethodsOur retrospective study data included 12179 images from 321 patients for developing AI detection systems and 6635 images from 187 patients for the Turing test. We utilized a deep learning-based tumor detection system with Faster R-CNN architecture, which generates region proposals by Region Proposal Network in the first stage and corrects the position and the size of the bounding box of the lesion area in the second stage. Each choice question featured four bounding boxes enclosing an identical tumor. Three were detected by the proposed deep learning model, whereas the other was annotated by a doctor; the results were shown to six doctors as respondents. If the respondent did not correctly identify the image annotated by a human, his answer was considered a misclassification. If all misclassification rates were >30%, the respondents were considered unable to distinguish the AI-detected tumor from the human-annotated one, which indicated that the AI system passed the Turing test.ResultsThe average misclassification rates in the Turing test were 51.2% (95% CI: 45.7%–57.5%) in the axial view (maximum of 62%, minimum of 44%) and 44.5% (95% CI: 38.2%–51.8%) in the sagittal view (maximum of 59%, minimum of 36%). The misclassification rates of all six respondents were >30%; therefore, our AI system passed the Turing test.ConclusionOur proposed intelligent spine tumor detection system has a similar detection ability to annotation doctors and may be an efficient tool to assist radiologists or orthopedists in primary spine tumor detection.

Highlights

  • Magnetic resonance imaging (MRI) is commonly used to diagnose spine disorders

  • Spine tumors may cause spine fractures, instability, neurological deficits, or even paralysis. They are rarely observed because of their low incidence. It is difficult for junior radiologists or orthopedists to accumulate diagnostic experience, and they may not be capable of detecting different spine tumors on MRI

  • Sagittal and axial images were selected as representatives for manual annotation and training for the automated detection model because they span a wider range of spine regions, crucial for training the Deep learning (DL) models for automated detection

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Summary

Introduction

Magnetic resonance imaging (MRI) is commonly used to diagnose spine disorders (e.g., myelopathy, spine canal stenosis, and traumatic injury). Spine tumors may cause spine fractures, instability, neurological deficits, or even paralysis. They are rarely observed because of their low incidence. It is difficult for junior radiologists or orthopedists to accumulate diagnostic experience, and they may not be capable of detecting different spine tumors on MRI. In this study, we applied the Turing test, a classical evaluation method in AI, on primary spine tumor DL detection on MR images. Our study aimed to assess the ability of an artificial intelligence (AI) system for spine tumor detection using the Turing test

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