1. Introduction
With the development of information technology, the use of an E-learning environment has become prevalent worldwide; moreover, it has also become part of the daily lives of elementary and middle school students, which has increased concerns regarding its effect on students’ health among their parents and schoolteachers, as well as the general public. Since 1985, studies conducted in China on the physical health of young students have demonstrated that the myopia rate of students has been high; moreover, the ratio of poor visual acuity detected has also demonstrated a continuous increasing tendency, and the age at which students were found to be myopic has gotten younger and younger [
1]. This is likely a consequence of the increased use of E-learning environments by young children. On 30 August 2018, eight departments of the Chinese government, including the Ministry of Education and National Health Commission, jointly resolved to implement the Comprehensive Plan to Prevent Nearsightedness Among Children and Teenagers, with the goal of reducing myopia’s prevalence among children and adolescents in China to approximately 3% by 2030.
In addition to China, myopia’s prevalence is high among children in Southeast Asian countries, whereas it is low among adolescents in West Asian, African, Oceanian, and American countries [
2]. The prevalence of myopia and high myopia varies according to region and ethnic group. On the basis of ethnic, economic, environmental, and other data, the global incidence of juvenile myopia and high myopia is expected to significantly increase during 2000–2050 [
3]. Moreover, some scholars have indicated that myopia prevalence depends on genetic factors (e.g., ethnicity); nevertheless, environmental factors (e.g., decrease in outdoor activities) also influence myopia development. For instance, among children, increased educational pressure and lifestyle changes have reduced the time spent on outdoor activities—this can later result in myopia development [
4]. Although several genes are related to high myopia, the question has thus far been discussed mainly from the perspectives of myopia prevalence, ethnic differences, and outdoor sports activities.
This study attempts to carry out empirical research from several dimensions of visual function and E-learning environment. The results of the empirical study may lay the foundation for the relevant decision-making of governments, schools, medical and health institutions, families, students, and other entities to care for children’s eyes and solve health problems (e.g., vision decline) during the digital education reform process in Southeast Asian countries.
2. Literature Review
Before the year 2000, the use of E-learning environments was not common in China and the world. At that time, researchers found that the main factors contributing to myopia in adolescents were heavy schoolwork load, long-term reading and writing at close range, neglect of physical exercise, poor lighting condition in the learning environment, and genetics [
5,
6]. Some empirical studies show that the Chinese government improved the learning conditions of students in various schools, especially the lighting conditions in classrooms, which had a certain effect on controlling the rate of myopia [
7].
After entering the 21st century, the E-learning environment is becoming more and more popular in the world, and relevant research is also increasing. Computer use can affect vision: According to the American Academy of Ophthalmology (AOA), extensive computer use can lead to eye fatigue, redness, blurred vision, myopia, and other eye symptoms [
8]. Kozeis found that viewing computer screens regularly can lead to eye discomfort, blurred vision, fatigue, headaches, and other symptoms [
9]. Taptagaporn reported that in the process of using a computer, the most common symptoms are burning eyes and muscle pain, which are related to computer use duration [
10]. In China, studies have indicated that the burden of classwork has some negative impacts on students’ vision. Yang et al. asserted that homework remains the main factor in vision decline among students [
11]. Yu et al. studied the impact of using an online teaching environment in the classroom on students’ vision and found that computer use in class was not the main reason for the decline in students’ vision. The authors reported that students’ vision can be improved by improving the efficiency of classroom teaching and reducing the burden of schoolwork [
12]. Zheng et al. studied the history of myopia prevention, treatment, and visual protection development worldwide; the authors reported that, among students, myopia is caused by the excessive growth of the visual axis, particularly that of visual acuity, which is caused by long-term reading and writing at close range, the heavy burden of schoolwork and homework, excessive pressure, high anxiety, lack of sleep and exercise, and nutritional imbalance [
13,
14].
Systematic and large-scale empirical studies on the effects of the E-learning environment on the visual function of elementary and middle school students and their scientific implications are lacking globally. Therefore, the Ministry of Education of China has set up a special project in which Capital Normal University, in collaboration with the General Administration of Sport, Beijing Sport University, and other relevant scientific research institutions, performed a large-scale two-year assessment.
Studies on visual function in students exposed to the E-learning environment have mostly been limited to assessing vision, which reflects spatial visual acuity and central vision in visual function but is not equivalent to visual function. Visual function also includes the peripheral vision, depth perception, and horary visual acuity, all of which are equally important in the development of elementary and middle school students. Therefore, the current study assessed not only the changes in elementary and middle school students’ vision, but also their visual field, visual depth (i.e., index of depth perception ability), and flicker fusion frequency (i.e., index of horary visual acuity).
E-learning environments include network teaching environments, as well as mobile learning environments. In elementary and middle schools, E-learning environment teaching equipment includes interactive electronic whiteboards or touch all-in-one machines, tablet computers, and Internet notebooks. In this study, the use time of the E-learning environment is the sum of the in- and after-class use time of the aforementioned equipment, specifically grouped as the in- and after-class use time of (1) electronic whiteboards or touch all-in-one machines; (2) all types of tablet computers and Internet notebooks; and (3) tablet computers or Internet notebooks, excluding smartphones and televisions.
Visual acuity refers to the maximum ability to distinguish the shape, size, and fine structure of an object with the eyes [
15]. Zheng et al. reported that children’s vision can reach the level of adults’ vision at the age of six years, and thus, the most important period for the prevention of myopia is 3–6 years of age. Moreover, myopia prevention should last at least until the end of university education [
16]. Logarithmic visual acuity charts are standard tools for visual acuity assessment and are thus widely used in optometric research and clinical applications [
17]. The Eye Optometry Group of the Ophthalmology Branch of the Chinese Medical Association and the Eye Optometry Professional Committee of the Ophthalmologists Branch of the Chinese Medical Association also recommended the use of the standard logarithmic visual acuity chart in the Consensus of Experts on the Standardization of Testing Equipment and Setting Up in the Survey of Myopia Among Children and Adolescents (2019) [
18].
Myopia refers to the visual distortion caused by the focus of the parallel light from 5 m away from the refraction system of the eye falling in front of the retina in the state of adjustment in the static state [
19]. Diopters greater than −6.00D are defined as high myopia [
20].
The visual field (i.e., peripheral vision) refers to all external scope and spatial factors of the visual angle noted when eyes are fixed in one position [
21]. It strongly influences people’s actions, and even survival. According to the World Health Organization, a surrounding visual field of <10° represents a loss of peripheral vision, even when central vision is normal; this narrow visual field can affect daily life and work to some extent [
22]. Visual field examination results can indicate the whole photographic function of the retinas and aid in evaluating the visual pathway and central vision function. They are also very helpful for the early detection of juvenile myopia and visual field damage from glaucoma [
23]. Zhou asserted that visual field development is similar to that of other physiological indexes of the human body and increases with age; before the age of 10 years, visual field development is faster in female individuals than in male individuals, but this trend reverses after the age of 10 years. Nevertheless, visual field development in female individuals is complete 1–2 years earlier than in male individuals [
22]. Perimeter (e.g., BD-II-108, Shanghai Yuanzhi Electronic Technology Co., Ltd., Shanghai, China) is a professional ophthalmic instrument used for measuring the visual field of the eyeball; it can provide detailed evaluation results for the upper, lower, inner, and outer directions of both the left and right eyes. After measurement, the tester only needs to connect the four points on the visual field map to obtain the range of the white visual field [
22,
24].
Depth perception refers to the perception of distance or depth of an object; it is realized by the cooperative activities of perception, such as seeing, listening, and moving, for which depth perception plays a leading role [
25]. Depth perception ability is used as a crucial selection standard in football, basketball, and other sports [
25,
26]. Ji indicated that depth perception development involves both natural and training growth factors; of these, training growth factors are the main promoter of depth perception development [
27]. In total, 73%–74% of 4-year-old children present stereovision, whereas approximately 20% demonstrate delayed development, with approximately 14% not demonstrating stereovision even after 8 years of age. Moreover, with increasing age, eye regulation ability decreases, and stereopsis worsens gradually [
28]. However, Chu reported that, at the ages of 14–22 years, depth perception is not affected by age factors [
26]. A depth perception tester (e.g., EP503A, Shanghai East China Normal University Science & Educational Instrument Co., Ltd., Shanghai, China) is an instrument for studying visual acuity in depth. It can test the minimum visual error of distance or depth of both eyes and can be widely used in the examination or selection of vehicle drivers, athletes, and other personnel required to have good depth perception, as well as in psychological experiments [
29].
Horary visual acuity refers to the eyes’ ability to distinguish the time characteristics of movement changes in things, which makes it an important indicator to judge the level of vision. Horary visual acuity is typically expressed by the maximum fusion frequency of a flash that human eyes can grasp. The higher the flicker fusion frequency, the higher the horary visual acuity [
30]. This index can be used in the early diagnosis of glaucoma [
31]. It is also commonly used for determining mental fatigue [
32]. Yu et al. reported that the flicker fusion frequency is linearly and negatively correlated with age—specifically, it decreases with age [
33]. However, a study on flight fatigue in international flight pilots demonstrated no significant correlation between flicker fusion frequency and age factors [
34]. A luminescent spot scintillator (e.g., EP403 Shanghai East China Normal University Science & Educational Instrument Co., Ltd., Shanghai, China) is an experimental instrument designed according to the principle of fusion critical frequency that can directly measure the critical frequency [
35,
36].
In general, this study analyzed the current situation concerning the visual function of elementary and middle school students in China by testing and evaluating the core indicators of visual function. The aim was to provide an empirical basis on which the government can formulate visual health standards for elementary and middle school students and a manual for the E-learning environment, and provide pertinent information to parents, schools, and the community on how to protect the vision and visual function of elementary and middle school students.
5. Discussion
5.1. ANOVA for the Interaction of Grade with Short- and Long-Term E-Learning Environment Use
To prevent false-positive errors and explore the interaction effect of the grade level with long- and short-term E-learning environment use, a two-factor mixed-design ANOVA was performed, and the results indicated that the main effect of the assessment timepoint on left eye visual acuity was nonsignificant (F = 1.763, p = 0.173). For left eye visual acuity, Mauchly’s W coefficient was 0.834 (c2 = 75.570, p < 0.01), indicating a violation of sphericity and thus confirming the correlation between the repeated assessment data. Greenhouse–Geiser correction results also demonstrate that the main effect of the assessment timepoint on left eye visual acuity was nonsignificant (F = 2.461, p = 0.095). Nevertheless, the main effect of grade on left eye visual acuity was significant (F = 32.858, p < 0.001): The left eye visual acuity of the students in higher grades was lower than that of the students in lower grades.
The interaction of grade with the left eye visual acuity assessment timepoint was significant (F = 22.762,
p < 0.001; details in
Table 5). The simple-effect test results demonstrate significant differences in left eye visual acuity among the three assessments (F = 47.265,
p < 0.001) in lower grades: The visual acuity in Assessment 3 was significantly lower than that in Assessments 1 and 2 (both
p < 0.001), but the differences in the visual acuity in Assessments 1 and 2 were nonsignificant (
p = 0.099). By contrast, in higher grades, these differences were nonsignificant between all three assessments (F = 2.182,
p = 0.114). It should be noted that the later the assessment timepoint was, the longer the students had continued to use E-learning environments.
The two-factor mixed-design ANOVA showed that the main effect of the assessment timepoint on right eye visual acuity was nonsignificant (F = 1.441, p = 0.238). Mauchly’s W coefficient was 0.867 (c2 = 58.382, p < 0.01), indicating a violation of sphericity and thus confirming the correlation between the repeat assessment data. Greenhouse–Geiser correction results demonstrate that the main effect of the assessment timepoint on right eye visual acuity was nonsignificant (F = 1.563, p = 0.212). However, the main effect of grade on right eye visual acuity was significant (F = 65.185, p < 0.001): The right eye visual acuity of the students in higher grades was lower than that of the students in lower grades.
The interaction of grade with the right eye visual acuity assessment timepoint was significant (F = 30.862,
p < 0.001; details in
Table 6). The simple-effect test results demonstrate a significant difference between right eye visual acuity in the three assessments (F = 50.829,
p < 0.001) for the lower grades: Visual acuity in Assessment 3 was significantly lower than that in Assessments 1 and 2 (both
p < 0.001), but the differences in visual acuity in Assessments 1 and 2 were nonsignificant (
p = 0.142). In higher grades, these differences were significant between all three assessments (F = 5.919,
p < 0.01): Visual acuity in Assessment 3 was significantly higher than that in Assessments 1 and 2 (
p < 0.05), and visual acuity in Assessment 2 was significantly lower than that in Assessment 1 (
p = 0.023).
Thus, the two-factor mixed-design ANOVA results indicate that the visual acuity of students in higher grades was lower than that of students in lower grades, and that the visual acuity of students in lower grades decreased as the assessment timepoints progressed (i.e., as the use of the E-learning environment was prolonged); whereas, in students in higher grades, it did not significantly change but improved.
The two-factor mixed-design ANOVA results demonstrate that the main effect of assessment timepoint on left eye flicker fusion frequency was also extremely significant (F = 160.570, p < 0.001). Mauchly’s W coefficient was 0.891 (c2 = 52.309, p < 0.01), indicating a violation of sphericity and thus confirming the correlation between the repeat assessment data. Greenhouse–Geiser correction also showed that the main effect of assessment timepoint on left eye flicker fusion frequency remained significant (F = 164.527, p < 0.001). A significant main effect of grade on left eye flicker fusion frequency (F = 68.889, p < 0.001) indicates that students in higher grades had a higher left eye flicker fusion frequency than lower grade students (i.e., horary visual acuity improved).
The interaction of grade with the assessment timepoint of left eye flicker fusion frequency was significant (F = 81.660, p < 0.001). The simple-effect test results revealed that in the lower grades, the differences in the left eye flicker fusion frequencies in the three assessments were significant (F = 724.176, p < 0.001), and the left eye flicker fusion frequency in Assessment 3 was significantly higher than in Assessments 1 and 2, whilst the left eye flicker fusion frequency in Assessment 2 was significantly higher than in Assessment 1 (p < 0.001); in the higher grades, the left eye flicker fusion frequencies in all three assessments differed significantly (F = 3.718, p < 0.01). Only Assessments 1 and 2 demonstrated a significant difference in the left eye flicker fusion frequency (p = 0.002), but the Assessment 2 value was significantly higher than the Assessment 1 value.
Two-factor mixed-design ANOVA results demonstrate that the main effect of the assessment timepoints of right eye flicker fusion frequency was highly significant (F = 145.229, p < 0.001). The Mauchly’s W coefficient was 0.254 (c2 = 619.932, p < 0.01), indicating a violation of sphericity and thus confirming the correlation between the repeat assessment data. Greenhouse–Geiser correction results showed that the main effect of the assessment timepoint of the right eye flicker fusion frequency remained highly significant (F = 52.858, p < 0.001). A significant main effect of grade on the right eye flicker fusion frequency (F = 44.190, p < 0.001) indicates that students in higher grades had higher right eye flicker fusion frequency than lower grade students (i.e., horary visual acuity became better).
The interaction of grade with the assessment timepoints of right eye flicker fusion frequency was significant (F = 15.364, p < 0.001). The simple-effect test results showed that, in lower grades, the right eye flicker fusion frequency of the three assessments differed significantly (F = 758.789, p < 0.001), and the right eye flicker fusion frequency in Assessment 3 was significantly higher than in Assessments 1 and 2 (p < 0.001). The right eye flicker fusion frequency in Assessment 2 was significantly higher than in Assessment 1 (p < 0.001). In higher grades, the right eye flicker fusion frequency of the three assessments demonstrated significant differences (F = 3.718, p < 0.05), of which only Assessments 1 and 3 of the right eye flicker fusion frequency demonstrated significant differences (p = 0.030). The right eye flicker fusion frequency in the third assessment was significantly higher than that in the first.
These ANOVA results thus indicate the following: (1) The horary visual acuity of both eyes was worse in higher grade students than in lower grade students; and (2) in both higher and lower grade students, horary visual acuity decreased with each timepoint (i.e., longer use of thee E-learning environment), with the horary visual acuity changes being more significant in lower-grade students.
Thus, the two-factor mixed-design ANOVA provided results that are close to those of single-factor ANOVA. However, the results of the two-factor mixed-design ANOVA for vision function and depth perception are not detailed here.
5.2. Relationship between Duration of Use and Visual Acuity in E-learning Environments
All students were ranked according to the time they spent using E-learning environments to exclude missing values. Finally, 561 valid samples were obtained. All respondents used E-learning environments in and after class for 0–30 h/week (average = 7.5 h/week).
Analysis of covariance (ANCOVA) was performed to explore E-learning environment use duration (in and after class) with elementary and middle school students’ visual acuity. Here, the weekly E-learning environment use duration was the independent variable, and students’ left eye visual acuity values in Assessments 2 and 1 were the dependent variable and covariate, respectively. First, the homogeneity test of the regression coefficient within the group was employed. The interaction between the independent variable and covariate was F (1, 479) = 0.358,
p > 0.05, which did not reach a significant level, and thus indicated a linear relationship between the covariate and the dependent variable in each group; consequently, the ANCOVA could be continued. To correctly estimate the effects of independent variables and covariance, the interaction terms were removed and reanalyzed. Levene’s variance homogeneity test yielded nonsignificant results (F (1, 481) = 0.016,
p > 0.05), indicating no significant differences in the dispersion of the two samples. The covariance reached a significant level (F (1, 480) = 905.533,
p < 0.01) and satisfied the conditions for a linear relationship. The test for between-group effects demonstrated significant results (F (1, 480) = 18.940,
p < 0.01), indicating that the time spent using the E-learning environment significantly affected students’ left eye visual acuity.
Table 7 summarizes the ANCOVA results for left eye visual acuity.
Similarly, the weekly duration of E-learning environment use by the elementary and middle school students was considered as the independent variable, and students’ right eye visual acuity in Assessments 2 and 1 as the dependent variable and covariate, respectively. The results revealed that E-learning environment use duration significantly affected students’ right eye visual acuity (F (1, 482) = 4.130,
p < 0.05). The right eye visual acuity ANCOVA results are summarized in
Table 8.
Therefore, in general, E-learning environment use duration is significantly correlated with student vision.
To further assess whether E-learning environment use duration (in and after class) has a positive or negative impact on the vision of elementary and middle school students, the samples were divided into two groups of equal numbers. Group 2 contained 281 students with heavy use of E-learning environments (i.e., E-learning environment use of 14–30 periods per week). The grade distribution of students in the two groups was basically the same. Compared with the mean value after covariance correction, light E-learning environment use (left eye = 4.91 and right eye = 4.89) led to significantly better visual acuity than heavy use (left eye = 4.89 and right eye = 4.88; F (1, 480) = 18.940, p < 0.01 and F (1, 482) = 4.130, p < 0.05, respectively).
The difference in the test results of the three test data between the experimental class (G4) and the control class in Grade 4, as mentioned above, shows that the measurement data in a 1.5-year E-learning environment use cycle demonstrated that the current E-learning environment use duration and frequency (10.12 h/week; approximately 6.75 h on average) did not significantly affect vision in the students in higher grades of elementary school (Grades 4 and 5). This may be related to the particularity of the upper grade of elementary school, noted in
Section 4.1.3: The vision of the students remained stable in G4, indicating that the higher grades of elementary school are exceptions.
Because of the lack of appropriate data and studies thus far, the relationship of E-learning environment use duration with visual field, depth perception, and horary visual acuity could not be analyzed further.