Machine learning determination of applied behavioral analysis treatment plan type.

Q1 Computer Science Brain Informatics Pub Date : 2023-03-02 DOI:10.1186/s40708-023-00186-8
Jenish Maharjan, Anurag Garikipati, Frank A Dinenno, Madalina Ciobanu, Gina Barnes, Ella Browning, Jenna DeCurzio, Qingqing Mao, Ritankar Das
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引用次数: 2

Abstract

Background: Applied behavioral analysis (ABA) is regarded as the gold standard treatment for autism spectrum disorder (ASD) and has the potential to improve outcomes for patients with ASD. It can be delivered at different intensities, which are classified as comprehensive or focused treatment approaches. Comprehensive ABA targets multiple developmental domains and involves 20-40 h/week of treatment. Focused ABA targets individual behaviors and typically involves 10-20 h/week of treatment. Determining the appropriate treatment intensity involves patient assessment by trained therapists, however, the final determination is highly subjective and lacks a standardized approach. In our study, we examined the ability of a machine learning (ML) prediction model to classify which treatment intensity would be most suited individually for patients with ASD who are undergoing ABA treatment.

Methods: Retrospective data from 359 patients diagnosed with ASD were analyzed and included in the training and testing of an ML model for predicting comprehensive or focused treatment for individuals undergoing ABA treatment. Data inputs included demographics, schooling, behavior, skills, and patient goals. A gradient-boosted tree ensemble method, XGBoost, was used to develop the prediction model, which was then compared against a standard of care comparator encompassing features specified by the Behavior Analyst Certification Board treatment guidelines. Prediction model performance was assessed via area under the receiver-operating characteristic curve (AUROC), sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV).

Results: The prediction model achieved excellent performance for classifying patients in the comprehensive versus focused treatment groups (AUROC: 0.895; 95% CI 0.811-0.962) and outperformed the standard of care comparator (AUROC 0.767; 95% CI 0.629-0.891). The prediction model also achieved sensitivity of 0.789, specificity of 0.808, PPV of 0.6, and NPV of 0.913. Out of 71 patients whose data were employed to test the prediction model, only 14 misclassifications occurred. A majority of misclassifications (n = 10) indicated comprehensive ABA treatment for patients that had focused ABA treatment as the ground truth, therefore still providing a therapeutic benefit. The three most important features contributing to the model's predictions were bathing ability, age, and hours per week of past ABA treatment.

Conclusion: This research demonstrates that the ML prediction model performs well to classify appropriate ABA treatment plan intensity using readily available patient data. This may aid with standardizing the process for determining appropriate ABA treatments, which can facilitate initiation of the most appropriate treatment intensity for patients with ASD and improve resource allocation.

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机器学习确定应用行为分析的治疗方案类型。
背景:应用行为分析(ABA)被认为是治疗自闭症谱系障碍(ASD)的金标准,具有改善ASD患者预后的潜力。它可以以不同的强度提供,分为综合或集中治疗方法。综合ABA针对多个发育领域,涉及20-40小时/周的治疗。集中的ABA针对个体行为,通常涉及10-20小时/周的治疗。确定适当的治疗强度需要经过训练的治疗师对患者进行评估,然而,最终的决定是高度主观的,缺乏标准化的方法。在我们的研究中,我们检查了机器学习(ML)预测模型的能力,以分类哪种治疗强度最适合接受ABA治疗的ASD患者。方法:对359例ASD患者的回顾性数据进行分析,并纳入ML模型的训练和测试,该模型用于预测接受ABA治疗的个体的综合或集中治疗。数据输入包括人口统计、学校教育、行为、技能和患者目标。使用梯度增强树集成方法XGBoost来开发预测模型,然后将其与包含行为分析师认证委员会治疗指南指定的特征的标准护理比较器进行比较。通过受试者工作特征曲线下面积(AUROC)、敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)评估预测模型的性能。结果:该预测模型在综合治疗组与重点治疗组的患者分类上取得了优异的成绩(AUROC: 0.895;95% CI 0.811-0.962),优于护理标准比较(AUROC 0.767;95% ci 0.629-0.891)。预测模型的敏感性为0.789,特异性为0.808,PPV为0.6,NPV为0.913。71例患者的数据被用来测试预测模型,只有14例发生了错误分类。大多数错误分类(n = 10)表明,将集中ABA治疗作为基本事实的患者进行综合ABA治疗,因此仍然提供治疗益处。有助于模型预测的三个最重要的特征是洗澡能力,年龄和过去ABA治疗的每周时间。结论:本研究表明,ML预测模型可以很好地利用现成的患者数据对适当的ABA治疗计划强度进行分类。这可能有助于标准化确定合适的ABA治疗的过程,从而有助于为ASD患者启动最合适的治疗强度,并改善资源分配。
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来源期刊
Brain Informatics
Brain Informatics Computer Science-Computer Science Applications
CiteScore
9.50
自引率
0.00%
发文量
27
审稿时长
13 weeks
期刊介绍: Brain Informatics is an international, peer-reviewed, interdisciplinary open-access journal published under the brand SpringerOpen, which provides a unique platform for researchers and practitioners to disseminate original research on computational and informatics technologies related to brain. This journal addresses the computational, cognitive, physiological, biological, physical, ecological and social perspectives of brain informatics. It also welcomes emerging information technologies and advanced neuro-imaging technologies, such as big data analytics and interactive knowledge discovery related to various large-scale brain studies and their applications. This journal will publish high-quality original research papers, brief reports and critical reviews in all theoretical, technological, clinical and interdisciplinary studies that make up the field of brain informatics and its applications in brain-machine intelligence, brain-inspired intelligent systems, mental health and brain disorders, etc. The scope of papers includes the following five tracks: Track 1: Cognitive and Computational Foundations of Brain Science Track 2: Human Information Processing Systems Track 3: Brain Big Data Analytics, Curation and Management Track 4: Informatics Paradigms for Brain and Mental Health Research Track 5: Brain-Machine Intelligence and Brain-Inspired Computing
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