人工智能在彻底改变虚弱诊断和病人护理中的作用

A. Hassan, M. Hassan, S. Ellahham
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Frailty is somewhat of an ambiguous diagnosis due to lack of a universally agreed upon definition and frailty assessment tool. Efforts have been put forth to delineate frailty and standardize its method of measurement, but many physicians with minimal to none geriatric experience are more likely to eyeball the patient from the foot end of the bed. Although the Comprehensive Geriatric Assessment (CGA) is a gold standard for multidisciplinary and systematic approach of frailty recognition, it is time-consuming and depends upon administers’ expertise [2]. The integration of AI into a frailty assessment strategy would not only cause a paradigm shift in the approach of physicians to this syndrome, but it would also revolutionize pre-existing protocols for management of frail and pre-frail status patients. Sufficient neglect of the variables that comprise frailty results in inefficacious treatment plans and fuels the cost of patient care. International guidelines have come to appreciate the reversibility of frailty and concur that it should be a mandatory component of patient evaluation [3]. AI may be the solution to pinpointing unidentified vulnerabilities that characterize frailty and ensuring that this entity of geriatric practice is more readily incorporated into other subspecialties, too. Chang et al. (2013) conducted research using “household goods” in hopes of facilitating “early detection of frailty and, hence, its early treatment” [4]. eChair, for example, was used to detect “slowness of movement, weakness and weight loss” [4]. Other devices were featured to detect long-term variations in frailty-determining elements and overall functional decline [4]. Pressure sensors, for example, have been embedded into walkers to measure “risk of fall” [4]. Similarly, Canadian Cardiovascular Society Guidelines (2017) encourage the monitoring of orthostatic vital signs to “identify individuals at risk of falls” [3]. Therefore, gradual integration of AI into day-to-day appliances can be exceptionally beneficial when monitoring patients for development of frailty-like “symptoms”. The authors would like to emphasize that the safety and accuracy of aforementioned AI technologies necessitate careful configuration. Literature unveils the key issues surrounding the safety of AI in healthcare [1]. Addressing these concerns is a top priority because frailty must be handled delicately and demands meticulous planning to eliminate risk factors. The concerns include, but are not limited to, oblivious impact, confidence of prediction, unexpected behaviors, privacy and anonymity [1]. Steps taken for mitigation have been described and, if executed, AI may be utilized to monitor and manage frail patients easily. Models for personalized risk estimates “should be well calibrated and efficient, and effective updating protocols should be implemented” [1]. “Automated systems and algorithms should be able to adjust for and respond to uncertainty and unpredictability” [1]. By centering our focus on the safety and accuracy of AI, we can transform older person’s homes into ‘smart homes’. Smart Homes are equipped with AI-embedded appliances; “networked sensors and devices that extend functionality of the home by adding intelligence” [5]. They collect data for continual analysis and predict potential physiological decline. These advancements would not only improve overall quality of life, but processed data supplements single visits to the primary care provider or geriatrician and eliminates the need for frequent journeys to the physician’s office. In addition, the implementation of AI may pave a pathway for investigating genetic biomarkers associated with increased risk of frailty. Machine learning AI could accelerate research that correlates frailty and Single Nucleotide Polymorphisms (SNP). However, current genetic sequencing technologies remain costly, and sequence processing is time-consuming. Third-generation sequencing technologies, such as Oxford Nanopore’s MinION and PromethION, are more cost-effective and agile solutions [6]. These advantages would make them more accessible and appropriate for use among suspected frail patients. Consequently, identification of SNPs already linked to frailty would be possible through deep RNNs that have been used to distinguish DNA modifications from the sequencing data provided by MinKNOW - the cloud-based platform responsible for data analysis [6,7]. Further advancement of “portable sequencing technology” would promote its use in smart nursing homes - enabling caregivers to closely monitor frailty-susceptible patients and tailoring their care based on the presence of specific SNPs. Ultimately, the authors recommend that the search for underlying risk factors pertinent to frailty commences with: (1) the administration of a simple, yet effective, preliminary frailty assessment in the clinical setting, or (2) opting for installation of AI technology into everydayuse equipment in a controlled environment (such as a smart home). If risk has been determined, (1) a more thorough frailty diagnosing tool may be undertaken by an experienced geriatrician or (2) the decision to undergo an AI-based confirmatory test to assess biomarkers and genetic sequences or (3) a combination of both may be performed.","PeriodicalId":73152,"journal":{"name":"Gerontology & geriatrics : research","volume":"22 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2021-05-31","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":"{\"title\":\"The Role of Artificial Intelligence in Revolutionizing Frailty Diagnosis and Patient Care\",\"authors\":\"A. Hassan, M. Hassan, S. Ellahham\",\"doi\":\"10.26420/gerontolgeriatrres.2021.1055\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Artificial Intelligence (AI) refers to the design of computer programs and machines which simulate the rudiments of human intelligence independently [1]. 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Efforts have been put forth to delineate frailty and standardize its method of measurement, but many physicians with minimal to none geriatric experience are more likely to eyeball the patient from the foot end of the bed. Although the Comprehensive Geriatric Assessment (CGA) is a gold standard for multidisciplinary and systematic approach of frailty recognition, it is time-consuming and depends upon administers’ expertise [2]. The integration of AI into a frailty assessment strategy would not only cause a paradigm shift in the approach of physicians to this syndrome, but it would also revolutionize pre-existing protocols for management of frail and pre-frail status patients. Sufficient neglect of the variables that comprise frailty results in inefficacious treatment plans and fuels the cost of patient care. International guidelines have come to appreciate the reversibility of frailty and concur that it should be a mandatory component of patient evaluation [3]. AI may be the solution to pinpointing unidentified vulnerabilities that characterize frailty and ensuring that this entity of geriatric practice is more readily incorporated into other subspecialties, too. Chang et al. (2013) conducted research using “household goods” in hopes of facilitating “early detection of frailty and, hence, its early treatment” [4]. eChair, for example, was used to detect “slowness of movement, weakness and weight loss” [4]. Other devices were featured to detect long-term variations in frailty-determining elements and overall functional decline [4]. Pressure sensors, for example, have been embedded into walkers to measure “risk of fall” [4]. Similarly, Canadian Cardiovascular Society Guidelines (2017) encourage the monitoring of orthostatic vital signs to “identify individuals at risk of falls” [3]. Therefore, gradual integration of AI into day-to-day appliances can be exceptionally beneficial when monitoring patients for development of frailty-like “symptoms”. The authors would like to emphasize that the safety and accuracy of aforementioned AI technologies necessitate careful configuration. Literature unveils the key issues surrounding the safety of AI in healthcare [1]. Addressing these concerns is a top priority because frailty must be handled delicately and demands meticulous planning to eliminate risk factors. The concerns include, but are not limited to, oblivious impact, confidence of prediction, unexpected behaviors, privacy and anonymity [1]. Steps taken for mitigation have been described and, if executed, AI may be utilized to monitor and manage frail patients easily. Models for personalized risk estimates “should be well calibrated and efficient, and effective updating protocols should be implemented” [1]. “Automated systems and algorithms should be able to adjust for and respond to uncertainty and unpredictability” [1]. By centering our focus on the safety and accuracy of AI, we can transform older person’s homes into ‘smart homes’. Smart Homes are equipped with AI-embedded appliances; “networked sensors and devices that extend functionality of the home by adding intelligence” [5]. They collect data for continual analysis and predict potential physiological decline. These advancements would not only improve overall quality of life, but processed data supplements single visits to the primary care provider or geriatrician and eliminates the need for frequent journeys to the physician’s office. In addition, the implementation of AI may pave a pathway for investigating genetic biomarkers associated with increased risk of frailty. Machine learning AI could accelerate research that correlates frailty and Single Nucleotide Polymorphisms (SNP). However, current genetic sequencing technologies remain costly, and sequence processing is time-consuming. Third-generation sequencing technologies, such as Oxford Nanopore’s MinION and PromethION, are more cost-effective and agile solutions [6]. These advantages would make them more accessible and appropriate for use among suspected frail patients. Consequently, identification of SNPs already linked to frailty would be possible through deep RNNs that have been used to distinguish DNA modifications from the sequencing data provided by MinKNOW - the cloud-based platform responsible for data analysis [6,7]. Further advancement of “portable sequencing technology” would promote its use in smart nursing homes - enabling caregivers to closely monitor frailty-susceptible patients and tailoring their care based on the presence of specific SNPs. 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引用次数: 1

摘要

人工智能(AI)是指能够独立模拟人类智能基本原理的计算机程序和机器的设计。机器学习包含多种深度学习算法,包括卷积神经网络(CNN)和循环神经网络(RNN),两者都可以对大规模数据进行连续分析,从而做出与先前检测到的模式一致的决策b[1]。人工智能在医疗保健行业和研究实验室中显示出巨大的就业潜力,可以准确预测疾病,最大限度地预防疾病,并完善治疗计划。随着技术的进步,人工智能的应用将逐渐变得更加可行,甚至可以在医院之外为虚弱的病人提供高质量的护理。由于缺乏普遍同意的定义和虚弱评估工具,虚弱是一个模糊的诊断。人们已经做出了努力来描绘虚弱,并将其测量方法标准化,但许多几乎没有老年医学经验的医生更有可能从床的脚端观察病人。尽管综合老年评估(CGA)是多学科和系统的衰弱识别方法的黄金标准,但它耗时且依赖于管理人员的专业知识[10]。将人工智能整合到虚弱评估策略中,不仅会导致医生对这种综合征的治疗方法发生范式转变,而且还会彻底改变现有的体弱和体弱前期患者管理方案。对构成虚弱的变量的充分忽视会导致无效的治疗计划,并增加患者护理的成本。国际准则已经开始认识到虚弱的可逆性,并一致认为它应该是患者评估的一个强制性组成部分。人工智能可能是精确定位脆弱特征的未识别漏洞的解决方案,并确保这一老年实践实体也更容易被纳入其他亚专业。Chang等人(2013)使用“家庭用品”进行了研究,希望促进“早期发现虚弱,从而早期治疗”[4]。例如,eChair被用来检测“动作缓慢、虚弱和体重减轻”[4]。其他设备的特点是检测衰弱决定因素和整体功能衰退的长期变化。例如,压力传感器已被植入步行者体内以测量“跌倒风险”。同样,加拿大心血管学会指南(2017)鼓励监测直立生命体征,以“识别有跌倒风险的个体”。因此,在监测患者是否出现类似虚弱的“症状”时,将人工智能逐渐整合到日常设备中可能会非常有益。作者想强调的是,上述人工智能技术的安全性和准确性需要仔细配置。文献揭示了围绕人工智能在医疗保健领域的安全性的关键问题。解决这些问题是当务之急,因为虚弱必须小心处理,需要细致的计划来消除风险因素。这些问题包括,但不限于,无意识的影响,预测的信心,意外行为,隐私和匿名。已经描述了为减轻影响而采取的步骤,如果执行,人工智能可以很容易地用于监测和管理体弱患者。个性化风险评估模型“应该得到很好的校准和高效,并且应该实施有效的更新方案”[1]。“自动化系统和算法应该能够调整和响应不确定性和不可预测性”[1]。通过关注人工智能的安全性和准确性,我们可以将老年人的家转变为“智能家居”。智能家居配备了嵌入人工智能的电器;“通过增加智能来扩展家庭功能的联网传感器和设备”[5]。他们收集数据进行持续分析,并预测潜在的生理衰退。这些进步不仅会提高整体生活质量,而且经过处理的数据还可以补充初级保健提供者或老年医生的单次就诊,并消除了频繁前往医生办公室的需要。此外,人工智能的实施可能为研究与脆弱风险增加相关的遗传生物标志物铺平道路。机器学习人工智能可以加速研究脆弱和单核苷酸多态性(SNP)之间的关系。然而,目前的基因测序技术仍然昂贵,序列处理耗时。第三代测序技术,如牛津纳米孔公司的MinION和PromethION,是更具成本效益和敏捷的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Role of Artificial Intelligence in Revolutionizing Frailty Diagnosis and Patient Care
Artificial Intelligence (AI) refers to the design of computer programs and machines which simulate the rudiments of human intelligence independently [1]. Machine learning encompasses a multitude of deep learning algorithms, including Convolutional Neural Networks (CNN) and Recurrent Neural Networks (RNN) - both of which enable continuous analysis of large-scale data to make decisions consistent with previously detected patterns [1]. AI exhibits high potential for employment in the healthcare industry and research laboratories to accurately predict illness, maximize disease prevention, and refine treatment plans. As technological advancements are made, the application of AI will gradually become more feasible and appropriately lend itself to advancing quality care for frail patients even away from the hospital setting. Frailty is somewhat of an ambiguous diagnosis due to lack of a universally agreed upon definition and frailty assessment tool. Efforts have been put forth to delineate frailty and standardize its method of measurement, but many physicians with minimal to none geriatric experience are more likely to eyeball the patient from the foot end of the bed. Although the Comprehensive Geriatric Assessment (CGA) is a gold standard for multidisciplinary and systematic approach of frailty recognition, it is time-consuming and depends upon administers’ expertise [2]. The integration of AI into a frailty assessment strategy would not only cause a paradigm shift in the approach of physicians to this syndrome, but it would also revolutionize pre-existing protocols for management of frail and pre-frail status patients. Sufficient neglect of the variables that comprise frailty results in inefficacious treatment plans and fuels the cost of patient care. International guidelines have come to appreciate the reversibility of frailty and concur that it should be a mandatory component of patient evaluation [3]. AI may be the solution to pinpointing unidentified vulnerabilities that characterize frailty and ensuring that this entity of geriatric practice is more readily incorporated into other subspecialties, too. Chang et al. (2013) conducted research using “household goods” in hopes of facilitating “early detection of frailty and, hence, its early treatment” [4]. eChair, for example, was used to detect “slowness of movement, weakness and weight loss” [4]. Other devices were featured to detect long-term variations in frailty-determining elements and overall functional decline [4]. Pressure sensors, for example, have been embedded into walkers to measure “risk of fall” [4]. Similarly, Canadian Cardiovascular Society Guidelines (2017) encourage the monitoring of orthostatic vital signs to “identify individuals at risk of falls” [3]. Therefore, gradual integration of AI into day-to-day appliances can be exceptionally beneficial when monitoring patients for development of frailty-like “symptoms”. The authors would like to emphasize that the safety and accuracy of aforementioned AI technologies necessitate careful configuration. Literature unveils the key issues surrounding the safety of AI in healthcare [1]. Addressing these concerns is a top priority because frailty must be handled delicately and demands meticulous planning to eliminate risk factors. The concerns include, but are not limited to, oblivious impact, confidence of prediction, unexpected behaviors, privacy and anonymity [1]. Steps taken for mitigation have been described and, if executed, AI may be utilized to monitor and manage frail patients easily. Models for personalized risk estimates “should be well calibrated and efficient, and effective updating protocols should be implemented” [1]. “Automated systems and algorithms should be able to adjust for and respond to uncertainty and unpredictability” [1]. By centering our focus on the safety and accuracy of AI, we can transform older person’s homes into ‘smart homes’. Smart Homes are equipped with AI-embedded appliances; “networked sensors and devices that extend functionality of the home by adding intelligence” [5]. They collect data for continual analysis and predict potential physiological decline. These advancements would not only improve overall quality of life, but processed data supplements single visits to the primary care provider or geriatrician and eliminates the need for frequent journeys to the physician’s office. In addition, the implementation of AI may pave a pathway for investigating genetic biomarkers associated with increased risk of frailty. Machine learning AI could accelerate research that correlates frailty and Single Nucleotide Polymorphisms (SNP). However, current genetic sequencing technologies remain costly, and sequence processing is time-consuming. Third-generation sequencing technologies, such as Oxford Nanopore’s MinION and PromethION, are more cost-effective and agile solutions [6]. These advantages would make them more accessible and appropriate for use among suspected frail patients. Consequently, identification of SNPs already linked to frailty would be possible through deep RNNs that have been used to distinguish DNA modifications from the sequencing data provided by MinKNOW - the cloud-based platform responsible for data analysis [6,7]. Further advancement of “portable sequencing technology” would promote its use in smart nursing homes - enabling caregivers to closely monitor frailty-susceptible patients and tailoring their care based on the presence of specific SNPs. Ultimately, the authors recommend that the search for underlying risk factors pertinent to frailty commences with: (1) the administration of a simple, yet effective, preliminary frailty assessment in the clinical setting, or (2) opting for installation of AI technology into everydayuse equipment in a controlled environment (such as a smart home). If risk has been determined, (1) a more thorough frailty diagnosing tool may be undertaken by an experienced geriatrician or (2) the decision to undergo an AI-based confirmatory test to assess biomarkers and genetic sequences or (3) a combination of both may be performed.
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