Faerie Mattins, Shriya Nagrath, Yijie Fan, Tomás Kevin Delgado Manea, Shoham Das, Aditi Shankar, John Tower
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The study employed existing video of aged flies as they approached death, and young flies subjected to lethal dehydration/starvation stress. Approximately 9,000 frames of video were manually annotated using open-source tools and used as the training set for You Only Look Once (YOLOv4) software. The software was tested on specific hours within a 22 hour video that was originally manually-annotated for number of falls per hour and corresponding timestamps. The model predictions were evaluated against the manually-annotated ground truth, revealing a strong correlation between the predicted and actual falls. The frequency of falls per hour increased dramatically 2-4 hours prior to death caused by dehydration/starvation stress, whereas extended periods of increased falls were observed in aged flies prior to death. This automated method effectively quantifies falls in video data without observer bias, providing a robust tool for future studies aimed at understanding causative factors and testing potential interventions.","PeriodicalId":22892,"journal":{"name":"The Journals of Gerontology Series A: Biological Sciences and Medical Sciences","volume":"180 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2025-02-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Machine learning scoring reveals increased frequency of falls proximal to death in Drosophila melanogaster\",\"authors\":\"Faerie Mattins, Shriya Nagrath, Yijie Fan, Tomás Kevin Delgado Manea, Shoham Das, Aditi Shankar, John Tower\",\"doi\":\"10.1093/gerona/glaf029\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Falls are a significant cause of human disability and death. Risk factors include normal aging, neurodegenerative disease, and sarcopenia. Drosophila melanogaster is a powerful model for study of normal aging and for modeling human neurodegenerative disease. Aging-associated defects in Drosophila climbing ability have been observed to be associated with falls, and immobility due to a fall is implicated as one cause of death in old flies. An automated method for quantifying Drosophila falls might facilitate the study of causative factors and possible interventions. Here, machine learning methods were developed to identify Drosophila falls in video recordings of 2D movement trajectories. The study employed existing video of aged flies as they approached death, and young flies subjected to lethal dehydration/starvation stress. Approximately 9,000 frames of video were manually annotated using open-source tools and used as the training set for You Only Look Once (YOLOv4) software. The software was tested on specific hours within a 22 hour video that was originally manually-annotated for number of falls per hour and corresponding timestamps. The model predictions were evaluated against the manually-annotated ground truth, revealing a strong correlation between the predicted and actual falls. The frequency of falls per hour increased dramatically 2-4 hours prior to death caused by dehydration/starvation stress, whereas extended periods of increased falls were observed in aged flies prior to death. 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引用次数: 0
摘要
跌倒是造成人类残疾和死亡的一个重要原因。危险因素包括正常衰老、神经退行性疾病和肌肉减少症。黑腹果蝇是研究正常衰老和模拟人类神经退行性疾病的有力模型。果蝇攀爬能力的衰老相关缺陷已被观察到与跌倒有关,而跌倒导致的不动被认为是老年果蝇死亡的一个原因。一种用于量化果蝇坠落的自动化方法可能有助于研究致病因素和可能的干预措施。在这里,开发了机器学习方法来识别2D运动轨迹视频记录中的果蝇跌落。这项研究使用了现有的老年苍蝇接近死亡的视频,以及遭受致命脱水/饥饿压力的年轻苍蝇的视频。使用开源工具对大约9,000帧视频进行了手动注释,并将其用作You Only Look Once (YOLOv4)软件的训练集。该软件在一个22小时的视频中的特定时间进行了测试,该视频最初是手动标注每小时跌倒的次数和相应的时间戳。模型预测是根据人工注释的地面事实进行评估的,揭示了预测和实际下降之间的强烈相关性。在死亡前2-4小时,由于脱水/饥饿压力,每小时跌倒的频率急剧增加,而在死亡前的老年苍蝇中,观察到跌倒增加的时间延长。这种自动化方法有效地量化了视频数据的下降,没有观察者偏差,为未来的研究提供了一个强大的工具,旨在了解导致因素和测试潜在的干预措施。
Machine learning scoring reveals increased frequency of falls proximal to death in Drosophila melanogaster
Falls are a significant cause of human disability and death. Risk factors include normal aging, neurodegenerative disease, and sarcopenia. Drosophila melanogaster is a powerful model for study of normal aging and for modeling human neurodegenerative disease. Aging-associated defects in Drosophila climbing ability have been observed to be associated with falls, and immobility due to a fall is implicated as one cause of death in old flies. An automated method for quantifying Drosophila falls might facilitate the study of causative factors and possible interventions. Here, machine learning methods were developed to identify Drosophila falls in video recordings of 2D movement trajectories. The study employed existing video of aged flies as they approached death, and young flies subjected to lethal dehydration/starvation stress. Approximately 9,000 frames of video were manually annotated using open-source tools and used as the training set for You Only Look Once (YOLOv4) software. The software was tested on specific hours within a 22 hour video that was originally manually-annotated for number of falls per hour and corresponding timestamps. The model predictions were evaluated against the manually-annotated ground truth, revealing a strong correlation between the predicted and actual falls. The frequency of falls per hour increased dramatically 2-4 hours prior to death caused by dehydration/starvation stress, whereas extended periods of increased falls were observed in aged flies prior to death. This automated method effectively quantifies falls in video data without observer bias, providing a robust tool for future studies aimed at understanding causative factors and testing potential interventions.