Haas Oliver, Maier Andreas, Rothgang Eva
Department of Industrial Engineering and Health, Institute of Medical Engineering, Technical University Amberg-Weiden, Weiden, Germany.
Pattern Recognition Lab, Department of Computer Science, Technical Faculty, Friedrich-Alexander University, Erlangen, Germany.
Front Reprod Health. 2021 Dec 2;3:756405. doi: 10.3389/frph.2021.756405. eCollection 2021.
HIV/AIDS is an ongoing global pandemic, with an estimated 39 million infected worldwide. Early detection is anticipated to help improve outcomes and prevent further infections. Point-of-care diagnostics make HIV/AIDS diagnoses available both earlier and to a broader population. Wide-spread and automated HIV risk estimation can offer objective guidance. This supports providers in making an informed decision when considering patients with high HIV risk for HIV testing or pre-exposure prophylaxis (PrEP). We propose a novel machine learning method that allows providers to use the data from a patient's previous stays at the clinic to estimate their HIV risk. All features available in the clinical data are considered, making the set of features objective and independent of expert opinions. The proposed method builds on association rules that are derived from the data. The incidence rate ratio (IRR) is determined for each rule. Given a new patient, the mean IRR of all applicable rules is used to estimate their HIV risk. The method was tested and validated on the publicly available clinical database MIMIC-IV, which consists of around 525,000 hospital stays that included a stay at the intensive care unit or emergency department. We evaluated the method using the area under the receiver operating characteristic curve (AUC). The best performance with an AUC of 0.88 was achieved with a model consisting of 53 rules. A threshold value of 0.66 leads to a sensitivity of 98% and a specificity of 53%. The rules were grouped into drug abuse, psychological illnesses (e.g., PTSD), previously known associations (e.g., pulmonary diseases), and new associations (e.g., certain diagnostic procedures). In conclusion, we propose a novel HIV risk estimation method that builds on existing clinical data. It incorporates a wide range of features, leading to a model that is independent of expert opinions. It supports providers in making informed decisions in the point-of-care diagnostics process by estimating a patient's HIV risk.
艾滋病毒/艾滋病是一场持续的全球大流行病,全球估计有3900万人感染。早期检测有望改善治疗结果并预防进一步感染。即时诊断使艾滋病毒/艾滋病诊断能够更早地提供给更广泛的人群。广泛且自动化的艾滋病毒风险评估可以提供客观指导。这有助于医疗服务提供者在考虑对艾滋病毒高风险患者进行艾滋病毒检测或暴露前预防(PrEP)时做出明智的决定。我们提出了一种新颖的机器学习方法,使医疗服务提供者能够利用患者先前在诊所就诊的数据来估计其艾滋病毒风险。临床数据中可用的所有特征都被考虑在内,使得特征集客观且独立于专家意见。所提出的方法基于从数据中得出的关联规则。为每个规则确定发病率比(IRR)。对于新患者,使用所有适用规则的平均IRR来估计其艾滋病毒风险。该方法在公开可用的临床数据库MIMIC-IV上进行了测试和验证,该数据库包含约525,000次住院记录,包括在重症监护病房或急诊科的住院记录。我们使用受试者工作特征曲线下面积(AUC)来评估该方法。由53条规则组成的模型实现了最佳性能,AUC为0.88。阈值0.66导致灵敏度为98%,特异性为53%。这些规则被分为药物滥用、心理疾病(如创伤后应激障碍)、先前已知的关联(如肺部疾病)和新的关联(如某些诊断程序)。总之,我们提出了一种基于现有临床数据的新颖艾滋病毒风险估计方法。它纳入了广泛的特征,从而形成一个独立于专家意见的模型。它通过估计患者的艾滋病毒风险,支持医疗服务提供者在即时诊断过程中做出明智的决定。