Predicting Caregiver Communications in a Geriatric Clinic.

IF 2.9 4区 医学 Q2 CLINICAL NEUROLOGY
John T Martin, Jason R Anderson, Kimberly R Chapman, Natalie Kayani, Jennifer Drost, Mary Beth Spitznagel
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引用次数: 0

Abstract

The current study evaluated the use of a machine learning model to determine benefit of medical record variables in predicting geriatric clinic communication requirements. Patient behavioral symptoms and global cognition, medical information, and caregiver intake assessments were extracted from 557 patient records. Two independent raters reviewed the subsequent 12 months for documented (1) incoming caregiver contacts, (2) outgoing clinic contacts, and (3) clinic communications. Random forest models' average explained variance in training sets for incoming, outgoing, and clinic communications were 7.42%, 3.65%, and 6.23%, respectively. Permutation importances revealed the strongest predictors across outcomes were patient neuropsychiatric symptoms, global cognition, and body mass, caregiver burden, and age (caregiver and patient). Average explained variance in out-of-sample test sets for incoming, outgoing, clinic communications were 6.17%, 2.78%, and 4.28%, respectively. Findings suggest patient neuropsychiatric symptoms, caregiver burden, caregiver and patient age, patient body mass index, and global cognition may be useful predictors of communication requirements for patient care in a geriatric clinic. Future studies should consider additional caregiver variables, such as personality characteristics, and explore modifiable factors longitudinally.

预测老年诊所护理人员的沟通。
目前的研究评估了机器学习模型的使用,以确定医疗记录变量在预测老年诊所沟通需求方面的益处。从557例患者记录中提取患者行为症状和整体认知、医疗信息和护理人员摄入评估。两名独立的评分员回顾了随后12个月记录的(1)新来的看护者接触,(2)离开诊所接触,以及(3)诊所沟通。随机森林模型在输入、输出和诊所通信的训练集中的平均解释方差分别为7.42%、3.65%和6.23%。排列重要性表明,患者神经精神症状、整体认知、体重、照顾者负担和年龄(照顾者和患者)是预后最强的预测因子。传入,传出,诊所通信的样本外测试集的平均解释方差分别为6.17%,2.78%和4.28%。研究结果表明,患者神经精神症状、照顾者负担、照顾者和患者年龄、患者体重指数和整体认知可能是老年门诊患者护理沟通需求的有用预测因素。未来的研究应考虑额外的照顾者变量,如人格特征,并纵向探索可修改的因素。
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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
40
审稿时长
>12 weeks
期刊介绍: Journal of Geriatric Psychiatry and Neurology (JGP) brings together original research, clinical reviews, and timely case reports on neuropsychiatric care of aging patients, including age-related biologic, neurologic, and psychiatric illnesses; psychosocial problems; forensic issues; and family care. The journal offers the latest peer-reviewed information on cognitive, mood, anxiety, addictive, and sleep disorders in older patients, as well as tested diagnostic tools and therapies.
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