Masi Davide, Zilich Rita, Candido Riccardo, Giancaterini Annalisa, Guaita Giacomo, Muselli Marco, Ponzani Paola, Santin Pierluigi, Verda Damiano, Musacchio Nicoletta
Department of Experimental Medicine, Section of Medical Pathophysiology, Food Science and Endocrinology, Sapienza University of Rome, 00161 Rome, Italy.
Mix-x SRL, 10015 Ivrea, Italy.
J Clin Med. 2023 Jun 16;12(12):4095. doi: 10.3390/jcm12124095.
Identifying and treating lipid abnormalities is crucial for preventing cardiovascular disease in diabetic patients, yet only two-thirds of patients reach recommended cholesterol levels. Elucidating the factors associated with lipid goal attainment represents an unmet clinical need. To address this knowledge gap, we conducted a real-world analysis of the lipid profiles of 11.252 patients from the Annals of the Italian Association of Medical Diabetologists (AMD) database from 2005 to 2019. We used a Logic Learning Machine (LLM) to extract and classify the most relevant variables predicting the achievement of a low-density lipoprotein cholesterol (LDL-C) value lower than 100 mg/dL (2.60 mmol/L) within two years of the start of lipid-lowering therapy. Our analysis showed that 61.4% of the patients achieved the treatment goal. The LLM model demonstrated good predictive performance, with a precision of 0.78, accuracy of 0.69, recall of 0.70, F1 Score of 0.74, and ROC-AUC of 0.79. The most significant predictors of achieving the treatment goal were LDL-C values at the start of lipid-lowering therapy and their reduction after six months. Other predictors of a greater likelihood of reaching the target included high-density lipoprotein cholesterol, albuminuria, and body mass index at baseline, as well as younger age, male sex, more follow-up visits, no therapy discontinuation, higher Q-score, lower blood glucose and HbA1c levels, and the use of anti-hypertensive medication. At baseline, for each LDL-C range analysed, the LLM model also provided the minimum reduction that needs to be achieved by the next six-month visit to increase the likelihood of reaching the therapeutic goal within two years. These findings could serve as a useful tool to inform therapeutic decisions and to encourage further in-depth analysis and testing.
识别和治疗脂质异常对于预防糖尿病患者的心血管疾病至关重要,但只有三分之二的患者达到推荐的胆固醇水平。阐明与实现脂质目标相关的因素是一项尚未满足的临床需求。为了填补这一知识空白,我们对意大利医学糖尿病学家协会(AMD)数据库中2005年至2019年的11252名患者的脂质谱进行了真实世界分析。我们使用逻辑学习机(LLM)提取并分类最相关的变量,以预测在降脂治疗开始后两年内低密度脂蛋白胆固醇(LDL-C)值低于100mg/dL(2.60mmol/L)的达成情况。我们的分析表明,61.4%的患者实现了治疗目标。LLM模型表现出良好的预测性能,精度为0.78,准确率为0.69,召回率为0.70,F1分数为0.74,ROC-AUC为0.79。实现治疗目标的最显著预测因素是降脂治疗开始时的LDL-C值及其六个月后的降低情况。其他更有可能达到目标的预测因素包括基线时的高密度脂蛋白胆固醇、蛋白尿和体重指数,以及年龄较小、男性、更多的随访就诊、未停药、较高的Q评分、较低的血糖和糖化血红蛋白水平,以及使用抗高血压药物。在基线时,对于分析的每个LDL-C范围,LLM模型还提供了在下一次六个月就诊时需要实现的最小降低幅度,以增加在两年内达到治疗目标的可能性。这些发现可作为指导治疗决策以及鼓励进一步深入分析和测试的有用工具。