Nothnagel Kerstin, Hay Alastair, Watson Jessica, Banks Jonathan
Bristol Medical School (PHS), Bristol, United Kingdom
Bristol Medical School (PHS), Bristol, United Kingdom.
BJGP Open. 2025 Jan 2;8(4). doi: 10.3399/BJGPO.2024.0165. Print 2024 Dec.
Deep vein thrombosis (DVT), a formation of blood clots within deep veins, mostly of the proximal lower limb, has an annual incidence of 1-2 per 1000. Patients who are affected by multiple chronic health conditions and who experience limited mobility are at high risk of developing DVT. Traditional DVT diagnosis involves probabilistic assessment in primary care, followed by specialised ultrasound scans (USS), mainly conducted in hospitals. The emergence of point-of-care ultrasound (POCUS), coupled with artificial intelligence (AI) applications, has the potential to expand primary care diagnostic capabilities.
To assess the accuracy and acceptability of AI-guided POCUS for DVT diagnosis when performed by non-specialists in primary care.
DESIGN & SETTING: Diagnostic cross-sectional study coupled with a qualitative evaluation conducted at primary care DVT clinics.
First, a diagnostic test accuracy (DTA) study will investigate the accuracy of AI-guided POCUS in 500 individuals with suspected DVT, performed by healthcare assistants (HCAs). The reference standard is the standard of care of USS conducted by sonographers. Second, after receiving both scans, participants will be invited to complete a patient satisfaction survey (PSS). Finally, semi-structured interviews with 20 participants and four HCAs, and three sonographers will explore the acceptability of AI-guided POCUS DVT diagnosis.
This study will rigorously evaluate the accuracy and acceptability of AI-guided POCUS DVT diagnosis conducted by non-specialists in primary care.
深静脉血栓形成(DVT)是指在深静脉内形成血凝块,主要发生在下肢近端,年发病率为千分之一至千分之二。患有多种慢性健康问题且行动受限的患者发生DVT的风险较高。传统的DVT诊断包括在初级保健中进行概率评估,随后主要在医院进行专门的超声扫描(USS)。即时超声(POCUS)的出现,加上人工智能(AI)应用,有可能扩大初级保健的诊断能力。
评估初级保健中非专科医生进行人工智能引导的POCUS诊断DVT的准确性和可接受性。
在初级保健DVT诊所进行的诊断性横断面研究及定性评估。
首先,一项诊断试验准确性(DTA)研究将调查由医疗助理(HCA)对500名疑似DVT患者进行人工智能引导的POCUS诊断的准确性。参考标准是超声科医生进行的USS标准护理。其次,在接受两次扫描后,将邀请参与者完成患者满意度调查(PSS)。最后,对20名参与者、4名HCA以及3名超声科医生进行半结构化访谈,以探讨人工智能引导的POCUS DVT诊断的可接受性。
本研究将严格评估初级保健中非专科医生进行人工智能引导的POCUS DVT诊断的准确性和可接受性。