基于人工智能的血小板独立无创检测MASLD患者肝纤维化

IF 1.7 Q3 GASTROENTEROLOGY & HEPATOLOGY
JGH Open Pub Date : 2025-04-04 DOI:10.1002/jgh3.70150
Shun-ichi Wakabayashi, Takefumi Kimura, Nobuharu Tamaki, Takanobu Iwadare, Taiki Okumura, Hiroyuki Kobayashi, Yuki Yamashita, Naoki Tanaka, Masayuki Kurosaki, Takeji Umemura
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引用次数: 0

摘要

背景和目的无创检查(nit),如基于血小板的指标和超声/MRI弹性成像,被广泛用于评估代谢功能障碍相关脂肪变性肝病(MASLD)的肝纤维化。然而,血小板计数并未常规纳入日本健康检查,限制了其在大规模筛查中的应用。此外,弹性成像虽然有效,但在常规实践中成本高且不易获得。大多数现有的基于人工智能的模型都包含了这些标记,限制了它们的适用性。本研究旨在开发一种简单而准确的人工智能模型,仅使用常规人口统计学和生化标志物进行肝纤维化分期。方法回顾性分析463例日本MASLD患者的活检证实资料。患者被随机分配到训练组(N = 370, 80%)和测试组(N = 93, 20%)。AI模型纳入了年龄、性别、BMI、糖尿病、高血压、高脂血症和常规血液标志物(AST、ALT、γ-GTP、HbA1c、葡萄糖、甘油三酯、胆固醇)。结果支持向量机模型具有较高的诊断性能,检测显著纤维化(≥F2)的曲线下面积(AUC)为0.886。晚期纤维化(≥F3)和肝硬化(F4)的auc分别为0.882和0.916。与FIB-4、APRI和FAST评分(0.80-0.96)相比,SVM在不需要血小板计数或弹性成像的情况下达到了相当的准确性。结论该AI模型可准确评估MASLD患者的肝纤维化,无需血小板计数或弹性成像。它的简单性、成本效益和强大的诊断性能使其非常适合大规模健康筛查和常规临床使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

AI-Based Platelet-Independent Noninvasive Test for Liver Fibrosis in MASLD Patients

AI-Based Platelet-Independent Noninvasive Test for Liver Fibrosis in MASLD Patients

Background and Aim

Noninvasive tests (NITs), such as platelet-based indices and ultrasound/MRI elastography, are widely used to assess liver fibrosis in metabolic dysfunction-associated steatotic liver disease (MASLD). However, platelet counts are not routinely included in Japanese health check-ups, limiting their utility in large-scale screenings. Additionally, elastography, while effective, is costly and less accessible in routine practice. Most existing AI-based models incorporate these markers, restricting their applicability. This study aimed to develop a simple yet accurate AI model for liver fibrosis staging using only routine demographic and biochemical markers.

Methods

This retrospective study analyzed biopsy-proven data from 463 Japanese MASLD patients. Patients were randomly assigned to training (N = 370, 80%) and test (N = 93, 20%) cohorts. The AI model incorporated age, sex, BMI, diabetes, hypertension, hyperlipidemia, and routine blood markers (AST, ALT, γ-GTP, HbA1c, glucose, triglycerides, cholesterol).

Results

The Support Vector Machine model demonstrated high diagnostic performance, with an area under the curve (AUC) of 0.886 for detecting significant fibrosis (≥ F2). The AUCs for advanced fibrosis (≥ F3) and cirrhosis (F4) were 0.882 and 0.916, respectively. Compared to FIB-4, APRI, and FAST score (0.80–0.96), SVM achieved comparable accuracy while eliminating the need for platelet count or elastography.

Conclusion

This AI model accurately assesses liver fibrosis in MASLD patients without requiring platelet count or elastography. Its simplicity, cost-effectiveness, and strong diagnostic performance make it well-suited for large-scale health screenings and routine clinical use.

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来源期刊
JGH Open
JGH Open GASTROENTEROLOGY & HEPATOLOGY-
CiteScore
3.40
自引率
0.00%
发文量
143
审稿时长
7 weeks
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