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一种人工智能工具在肿瘤评估扫描中偶然发现肺栓塞检测中的作用

Contribution of an Artificial Intelligence Tool in the Detection of Incidental Pulmonary Embolism on Oncology Assessment Scans.

作者信息

Ammari Samy, Camez Astrid Orfali, Ayobi Angela, Quenet Sarah, Zemmouri Amir, Mniai El Mehdi, Chaibi Yasmina, Franciosini Angelo, Clavel Louis, Bidault François, Muller Serge, Lassau Nathalie, Balleyguier Corinne, Assi Tarek

机构信息

Department of Radiology, Gustave Roussy, 94805 Villejuif, France.

Laboratoire d'Imagerie Biomédicale Multimodale Paris-Saclay, Inserm, CNRS, CEA, BIOMAPS, UMR 1281, Université Paris-Saclay, 94800 Villejuif, France.

出版信息

Life (Basel). 2024 Oct 22;14(11):1347. doi: 10.3390/life14111347.

Abstract

INTRODUCTION

The incidence of venous thromboembolism is estimated to be around 3% of cancer patients. However, a majority of incidental pulmonary embolism (iPE) can be overlooked by radiologists in asymptomatic patients, performing CT scans for disease surveillance, which may significantly impact the patient's health and management. Routine imaging in oncology is usually reviewed with delayed hours after the acquisition of images. Nevertheless, the advent of AI in radiology could reduce the risk of the diagnostic delay of iPE by an optimal triage immediately at the acquisition console. This study aimed to determine the accuracy rate of an AI algorithm (CINA-iPE) in detecting iPE and the duration until the management of cancer patients in our center, in addition to describing the characteristics of patients with a confirmed pulmonary embolism (PE).

MATERIALS AND METHODS

This is a retrospective analysis of the role of Avicenna's CE-certified and FDA-cleared CINA-iPE algorithm in oncology patients treated at Gustave Roussy Cancer Campus. The results obtained from the AI algorithm were compared with the attending radiologist's report and were analyzed by both a radiology resident and a senior radiologist. In case of any discordant results, the reason for this discrepancy was further investigated. The duration between the exact time of the CT scan and analysis was assessed, as well as the duration from the result's report and the start of active management.

RESULTS

Out of 3047 patients, 104 alerts were detected for iPE (prevalence of 1.3%), while 2942 had negative findings. In total, 36 of the 104 patients had confirmed PE, while 68 alerts were false positives. Only one patient reported as negative by the AI tool was deemed to have a PE by the radiologist. The sensitivity and specificity of the AI model were 97.3% and 97.74%, while the PPV and NPV were 34.62% and 99.97%, respectively. Most causes of FP were artifacts (22 cases, 32.3%) and lymph nodes (11 cases, 16.2%). Seven patients experienced delayed diagnosis, requiring them to return to the ER for treatment after being sent home following their scan. The remaining patients received prompt care immediately after their testing, with a mean delay time of 8.13 h.

CONCLUSIONS

The addition of an AI system for the detection of unsuspected PEs on chest CT scans in routine oncology care demonstrated a promising efficacy in comparison to human performance. Despite a low prevalence, the sensitivity and specificity of the AI tool reached 97.3% and 97.7%, respectively, with detection of all the reported clinical PEs, except one single case. This study describes the potential synergy between AI and radiologists for an optimal diagnosis of iPE in routine clinical cancer care.

CLINICAL RELEVANCE STATEMENT

In the oncology field, iPEs are common, with an increased risk of morbidity when missed with a delayed diagnosis. With the assistance of a reliable AI tool, the radiologist can focus on the challenging analysis of oncology results while dealing with urgent diagnosis such as PE by sending the patient straight to the ER (Emergency Room) for prompt treatment.

摘要

引言

静脉血栓栓塞的发生率估计约为癌症患者的3%。然而,大多数偶然发生的肺栓塞(iPE)在无症状患者进行疾病监测的CT扫描时可能会被放射科医生忽视,这可能会对患者的健康和治疗产生重大影响。肿瘤学中的常规影像学检查通常在图像采集数小时后才进行复查。然而,放射学中人工智能的出现可以通过在采集控制台立即进行最佳分诊来降低iPE诊断延迟的风险。本研究旨在确定人工智能算法(CINA-iPE)在检测iPE方面的准确率以及在我们中心癌症患者管理前的持续时间,此外还描述了确诊肺栓塞(PE)患者的特征。

材料与方法

这是一项对在古斯塔夫·鲁西癌症中心接受治疗的肿瘤患者中,阿维森纳公司获得CE认证和FDA批准的CINA-iPE算法作用的回顾性分析。将人工智能算法得到的结果与主治放射科医生的报告进行比较,并由放射科住院医师和资深放射科医生进行分析。如果出现任何不一致的结果,则进一步调查差异的原因。评估CT扫描的确切时间与分析之间的持续时间,以及从结果报告到开始积极治疗的持续时间。

结果

在3047例患者中,检测到104例iPE警报(患病率为1.3%),而2942例结果为阴性。在104例患者中,共有36例确诊为PE,68例警报为假阳性。人工智能工具报告为阴性的患者中只有1例被放射科医生判定为患有PE。人工智能模型的敏感性和特异性分别为97.3%和97.74%,而阳性预测值和阴性预测值分别为34.62%和99.97%。大多数假阳性原因是伪影(22例,32.3%)和淋巴结(11例,16.2%)。7例患者诊断延迟,在扫描后被送回家后需要返回急诊室接受治疗。其余患者在检测后立即得到及时护理,平均延迟时间为8.13小时。

结论

在常规肿瘤护理中,添加用于检测胸部CT扫描中未被怀疑的PE的人工智能系统与人工表现相比显示出有前景的效果。尽管患病率较低,但人工智能工具的敏感性和特异性分别达到97.3%和97.7%,除了1例单独病例外,检测出了所有报告的临床PE。本研究描述了人工智能与放射科医生在常规临床癌症护理中对iPE进行最佳诊断的潜在协同作用。

临床相关性声明

在肿瘤学领域,iPE很常见,漏诊且诊断延迟时发病风险增加。在可靠的人工智能工具的帮助下,放射科医生可以在处理诸如PE等紧急诊断时,通过直接将患者送往急诊室进行及时治疗,从而专注于对肿瘤学结果进行具有挑战性的分析。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8d9a/11595865/75d005c1db1f/life-14-01347-g001.jpg

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