Koyun Mustafa, Cevval Zeycan Kubra, Reis Bahadir, Ece Bunyamin
Department of Radiology, Kastamonu Training and Research Hospital, Kastamonu 37150, Turkey.
Department of Radiology, Kastamonu University, Kastamonu 37150, Turkey.
Diagnostics (Basel). 2025 Jan 9;15(2):143. doi: 10.3390/diagnostics15020143.
The role of artificial intelligence (AI) in radiological image analysis is rapidly evolving. This study evaluates the diagnostic performance of Chat Generative Pre-trained Transformer Omni (GPT-4 Omni) in detecting intracranial hemorrhages (ICHs) in non-contrast computed tomography (NCCT) images, along with its ability to classify hemorrhage type, stage, anatomical location, and associated findings. A retrospective study was conducted using 240 cases, comprising 120 ICH cases and 120 controls with normal findings. Five consecutive NCCT slices per case were selected by radiologists and analyzed by ChatGPT-4o using a standardized prompt with nine questions. Diagnostic accuracy, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) were calculated by comparing the model's results with radiologists' assessments (the gold standard). After a two-week interval, the same dataset was re-evaluated to assess intra-observer reliability and consistency. ChatGPT-4o achieved 100% accuracy in identifying imaging modality type. For ICH detection, the model demonstrated a diagnostic accuracy of 68.3%, sensitivity of 79.2%, specificity of 57.5%, PPV of 65.1%, and NPV of 73.4%. It correctly classified 34.0% of hemorrhage types and 7.3% of localizations. All ICH-positive cases were identified as acute phase (100%). In the second evaluation, diagnostic accuracy improved to 73.3%, with a sensitivity of 86.7% and a specificity of 60%. The Cohen's Kappa coefficient for intra-observer agreement in ICH detection indicated moderate agreement (κ = 0.469). ChatGPT-4o shows promise in identifying imaging modalities and ICH presence but demonstrates limitations in localization and hemorrhage type classification. These findings highlight its potential for improvement through targeted training for medical applications.
人工智能(AI)在放射图像分析中的作用正在迅速发展。本研究评估了聊天生成预训练变换器全能版(Chat Generative Pre-trained Transformer Omni,GPT-4 Omni)在非增强计算机断层扫描(NCCT)图像中检测颅内出血(ICH)的诊断性能,以及其对出血类型、阶段、解剖位置和相关发现进行分类的能力。使用240例病例进行了一项回顾性研究,其中包括120例ICH病例和120例检查结果正常的对照。放射科医生为每个病例选择连续的5个NCCT切片,并由ChatGPT-4o使用包含9个问题的标准化提示进行分析。通过将模型结果与放射科医生的评估(金标准)进行比较,计算诊断准确性、敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)。间隔两周后,对同一数据集进行重新评估,以评估观察者内部的可靠性和一致性。ChatGPT-4o在识别成像模态类型方面达到了100%的准确率。对于ICH检测,该模型的诊断准确率为68.3%,敏感性为79.2%,特异性为57.5%,PPV为65.1%,NPV为73.4%。它正确分类了34.0%的出血类型和7.3%的出血位置。所有ICH阳性病例均被判定为急性期(100%)。在第二次评估中,诊断准确率提高到73.3%,敏感性为86.7%,特异性为60%。ICH检测中观察者内部一致性的Cohen's Kappa系数表明一致性中等(κ = 0.469)。ChatGPT-4o在识别成像模态和ICH存在方面显示出前景,但在定位和出血类型分类方面存在局限性。这些发现突出了通过针对医学应用的定向训练来改进它的潜力。