One scan, multiple insights: A review of AI-Driven biomarker imaging and composite measure detection in lung cancer screening

Saher Verma , Leander Maerkisch , Alberto Paderno , Leonard Gilberg , Bianca Teodorescu , Mathias Meyer
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Abstract

In an era where early detection of diseases is paramount, integrating artificial intelligence (AI) into routine lung cancer screening offers a groundbreaking approach to simultaneously uncover multiple health conditions from a single scan. The fact that lung cancer is still the most common cause of cancer-related deaths globally emphasizes how important early detection is to raising survival rates. Traditional low dose computed tomography (LDCT) focuses primarily on identifying lung malignancies, often missing the opportunity to detect other clinically relevant biomarkers. This review explores the expanding role of AI in radiology, where AI-driven algorithms can simultaneously detect multiple biomarkers and composite health measures, facilitating the opportunistic identification of conditions beyond lung cancer. These include musculoskeletal disorders, cardiovascular diseases, pulmonary conditions, hepatic steatosis, and malignancies in the adrenal and thyroid glands, as well as breast tissue. Through an extensive review of current literature sourced from PubMed, the review highlights advancements in AI-driven biomarker detection, evaluates the potential benefits of a broader diagnostic approach, and addresses challenges related to model standardization and clinical integration. AI-enhanced LDCT screening shows significant promise in augmenting routine screenings, potentially advancing early detection, comprehensive patient assessments, and overall disease management across multiple health conditions.

Abstract Image

一次扫描,多重洞察:人工智能驱动的生物标志物成像和复合测量检测在肺癌筛查中的综述
在一个早期发现疾病至关重要的时代,将人工智能(AI)整合到常规肺癌筛查中,提供了一种开创性的方法,可以通过一次扫描同时发现多种健康状况。肺癌仍然是全球癌症相关死亡的最常见原因,这一事实强调了早期检测对提高生存率的重要性。传统的低剂量计算机断层扫描(LDCT)主要侧重于识别肺部恶性肿瘤,往往错过了检测其他临床相关生物标志物的机会。这篇综述探讨了人工智能在放射学中不断扩大的作用,人工智能驱动的算法可以同时检测多种生物标志物和复合健康指标,促进对肺癌以外疾病的机会性识别。这些疾病包括肌肉骨骼疾病、心血管疾病、肺病、肝脂肪变性、肾上腺和甲状腺以及乳腺组织的恶性肿瘤。通过对来自PubMed的当前文献的广泛审查,该审查强调了人工智能驱动的生物标志物检测方面的进展,评估了更广泛诊断方法的潜在益处,并解决了与模型标准化和临床整合相关的挑战。人工智能增强的LDCT筛查在增强常规筛查、潜在地推进早期发现、全面的患者评估和跨多种健康状况的整体疾病管理方面显示出巨大的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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