Pugliese Giorgia, Maccari Alberto, Felisati Elena, Felisati Giovanni, Giudici Leonardo, Rapolla Chiara, Pisani Antonia, Saibene Alberto Maria
Otolaryngology Unit Santi Paolo e Carlo Hospital Milan Italy.
Department of Health Sciences Università degli Studi di Milano Milan Italy.
Clin Case Rep. 2023 Sep 19;11(9):e7933. doi: 10.1002/ccr3.7933. eCollection 2023 Sep.
Large language models have made artificial intelligence readily available to the general public and potentially have a role in healthcare; however, their use in difficult differential diagnosis is still limited, as demonstrated by a case of necrotizing otitis externa.
This case report presents a peculiar case of necrotizing otitis externa (NOE) with skull base involvement which proved diagnostically challenging. The initial patient presentation and the imaging performed on the 78-year-old patient suggested a neoplastic rhinopharyngeal lesion and only after several unsuccessful biopsies the patient was transferred to our unit. Upon re-evaluation of the clinical picture, a clinical hypothesis of NOE with skull base erosion was made and confirmed by identifying in biopsy specimens of skull base bone and external auditory canal skin. Upon diagnosis confirmation, the patient was treated with culture-oriented long-term antibiotics with complete resolution of the disease. Given the complex clinical presentation, we chose to submit a posteriori this NOE case to two large language models (LLM) to test their ability to handle difficult differential diagnoses. LLMs are easily approachable artificial intelligence tools that enable human-like interaction with the user relying upon large information databases for analyzing queries. The LLMs of choice were ChatGPT-3 and ChatGPT-4 and they were requested to analyze the case being provided with only objective clinical and imaging data.
大型语言模型已使人工智能易于被公众获取,并且在医疗保健领域可能发挥作用;然而,正如一例坏死性外耳道炎病例所示,它们在困难的鉴别诊断中的应用仍然有限。
本病例报告介绍了一例伴有颅底受累的坏死性外耳道炎(NOE)特殊病例,该病例在诊断上具有挑战性。最初患者的表现以及对这位78岁患者进行的影像学检查提示为鼻咽部肿瘤性病变,仅在多次活检未成功后,患者才被转至我们科室。在重新评估临床情况后,提出了伴有颅底侵蚀的NOE临床假说,并通过在颅底骨和外耳道皮肤的活检标本中发现相关病变得以证实。确诊后,患者接受了针对培养结果的长期抗生素治疗,疾病完全缓解。鉴于临床表现复杂,我们选择事后将此例NOE病例提交给两个大型语言模型(LLM),以测试它们处理困难鉴别诊断的能力。大型语言模型是易于使用的人工智能工具,依靠大型信息数据库分析查询,能够与用户进行类似人类的交互。选用的大型语言模型是ChatGPT-3和ChatGPT-4,并要求它们仅根据提供的客观临床和影像学数据来分析该病例。