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使用移动健康应用程序(iGAM)远程减少牙龈炎(第 2 部分):前瞻性观察研究。

Using an mHealth App (iGAM) to Reduce Gingivitis Remotely (Part 2): Prospective Observational Study.

机构信息

Department of Community Dentistry, Faculty of Dental Medicine, The Hebrew University-Hadassah School of Dental Medicine, Jerusalem, Israel.

Department of Software Engineering, Azrieli College of Engineering, Jerusalem, Israel.

出版信息

JMIR Mhealth Uhealth. 2021 Sep 16;9(9):e24955. doi: 10.2196/24955.

Abstract

BACKGROUND

Gingivitis is a nonpainful, inflammatory condition that can be managed at home. Left untreated, gingivitis can lead to tooth loss. Periodic dental examinations are important for early diagnosis and treatment of gum diseases. To contain the spread of the coronavirus, governments, including in Israel, have restricted movements of their citizens which might have caused routine dental checkups to be postponed.

OBJECTIVE

This study aimed to examine the ability of a mobile health app, iGAM, to reduce gingivitis, and to determine the most effective interval between photograph submissions.

METHODS

A prospective observational cohort study with 160 unpaid participants divided into 2 equal groups using the iGAM app was performed. The intervention group photographed their gums weekly for 8 weeks. The wait-list control group photographed their gums at the time of recruitment and 8 weeks later. After photo submission, the participants received the same message "we recommended that you read the information in the app regarding oral hygiene habits." A single-blinded researcher examined all the images and scored them according to the Modified Gingival Index (MGI).

RESULTS

The average age of the intervention group was 26.77 (SD 7.43) and 28.53 (SD 10.44) for the wait-list control group. Most participants were male (intervention group: 56/75,74.7%; wait-list control group: 34/51, 66.7%) and described themselves as "secular"; most were "single" non-smokers (intervention group: 56/75, 74.7%; wait-list control group: 40/51, 78.4%), and did not take medications (intervention group: 64/75, 85.3%; wait-list control group: 40/51, 78.4%). A total of 126 subjects completed the study. A statistically significant difference (P<.001) was found in the dependent variable (MGI). Improvements in gingival health were noted over time, and the average gingivitis scores were significantly lower in the intervention group (mean 1.16, SD 1.18) than in the wait-list control group (mean 2.16, SD 1.49) after 8 weeks. Those with more recent dental visits had a lower MGI (P=.04). No association was found between knowledge and behavior. Most participants were familiar with the recommendations for maintaining oral health, yet they only performed some of them.

CONCLUSIONS

A dental selfie taken once a week using an mobile health app (iGAM) reduced the signs of gingivitis and promoted oral health. Selfies taken less frequently yielded poorer results. During the current pandemic, where social distancing recommendations may be causing people to avoid dental clinics, this app can remotely promote gum health.

摘要

背景

牙龈炎是一种无痛的炎症性疾病,可以在家中进行治疗。如果不加以治疗,牙龈炎可能会导致牙齿脱落。定期进行牙科检查对于早期诊断和治疗牙龈疾病非常重要。为了控制冠状病毒的传播,包括以色列在内的各国政府都限制了公民的流动,这可能导致常规的牙科检查被推迟。

目的

本研究旨在检查移动健康应用程序 iGAM 减少牙龈炎的能力,并确定提交照片的最有效间隔。

方法

一项前瞻性观察队列研究,共有 160 名无报酬参与者,使用 iGAM 应用程序分为两组。干预组每周拍摄一次牙龈照片,持续 8 周。等待名单对照组在招募时和 8 周后拍摄牙龈照片。提交照片后,参与者会收到相同的信息“我们建议您阅读应用程序中有关口腔卫生习惯的信息”。一位单盲研究人员检查了所有图像,并根据改良牙龈指数(MGI)对其进行了评分。

结果

干预组的平均年龄为 26.77(SD 7.43),等待名单对照组的平均年龄为 28.53(SD 10.44)。大多数参与者为男性(干预组:56/75,74.7%;等待名单对照组:34/51,66.7%),并自称为“世俗”;大多数是“单身”不吸烟者(干预组:56/75,74.7%;等待名单对照组:40/51,78.4%),且不服用药物(干预组:64/75,85.3%;等待名单对照组:40/51,78.4%)。共有 126 名受试者完成了研究。依赖变量(MGI)存在统计学显著差异(P<.001)。随着时间的推移,牙龈健康状况有所改善,干预组的平均牙龈炎评分明显低于等待名单对照组(平均 1.16,SD 1.18),在 8 周后(平均 2.16,SD 1.49)。那些最近进行过牙科就诊的人 MGI 较低(P=.04)。知识和行为之间没有发现关联。大多数参与者熟悉保持口腔健康的建议,但他们只执行了其中的一些建议。

结论

使用移动健康应用程序(iGAM)每周拍摄一次牙齿自拍可以减轻牙龈炎的症状并促进口腔健康。拍摄频率较低则效果较差。在当前的大流行期间,社交距离的建议可能会导致人们避免去看牙医,而这款应用程序可以远程促进牙龈健康。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/df54/8485186/1d9177d2e8b8/mhealth_v9i9e24955_fig1.jpg

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