Background
Oral health-related quality of life (OHRQoL), involving participant-based outcome (PBO) measures, is a prominent topic in dentistry [
1]. This assessment compliments the biomedical concept of oral diseases by considering a wider biopsychosocial model, thereby presenting the overall health and well-being of individuals. In adolescent-aged schoolchildren, the Child Perception Questionnaire (CPQ), the Child Oral Health Impact Profile (COHIP), and the Child Oral Impacts on Daily Performances (C-OIDP) are commonly used OHRQoL assessment tools. These tools avoid proxy measures i.e. collect information straight from children instead of parents/caregivers and demonstrate high methodological quality (EMPRO: evaluating the methodological quality of each study focused on measurement properties) [
2]. Between them, the C-OIDP assessment tool is shorter with less items to respond, constituting a lower participant burden, and is, therefore, easier in collecting information on the prevalence, frequency, and severity of oral impacts while interviewing a larger study sample [
3].
The C-OIDP is based on the concept that oral health (OH) conditions negatively impact the specific daily performances of children, such as; eating, speaking, cleaning teeth, relaxing including sleeping, smiling, laughing and showing teeth without embarrassment, maintain emotional state, study including going to school and doing homework, and contact with other people [
4]. Eighteen studies exhibited the test–retest reliability with intraclass correlation values ranging from 0.70 to 0.98, and five studies confirmed the internal consistency with Cronbach’s alpha values ranging from 0.79 to 0.91 [
2,
5]. Moreover, this tool has been used in reporting the OHRQoL of children from diverse ethnic and language backgrounds [
4,
6‐
8].
Despite the extensive application, impact of OH measures on specific daily performances and the overall C-OIDP score still needs to be explored. The earlier studies that examined the impact of active caries did not investigate the extent of its impact [
9,
10]. Further, it is unclear from the existing reports, which of the clinical and/or self-perceived OH measures is a better predictor of the impacted daily performances. Besides, there is no expansive information on the OHRQoL of children in Saudi Arabia using the C-OIDP tool, as the first study only involved the boys sample [
11]. Next, none of the earlier reports had differentiated the findings related to disease experience measures and treatment measures.
Thus, if the result of an association between oral impact score and clinical caries measures, such as having at least one caries tooth (≥ 1), is comparable to self-perceived tooth decay, and if the caries experience measure using DMFT has a similar impact to its components, the DT, MT and FT, then the findings of OHRQoL outcomes may contribute better in policy-making and -application [
12]. To address these gaps in understanding, the objectives were; first, to report the self-perceived and clinically examined oral health (OH) measures that are associated with the oral impacts on daily performances. Second, to identify the OH measure that best predicts greater oral impact scores based on the magnitude of effect size and precision. Third, to investigate the difference in findings related to the disease experience measures and the treatment measures.
Results
A total of 720 children were invited to participate in the study. However, 9 boys and 11 girls did not provide the signed consent, therefore the final sample size was 700 (N) consisting of 51.6% boys and 48.4% girls. The mean age was 12.8 years (SD = 0.79), and the proportion of children from the 12-year-old age group was greater (44.6%), followed by 13-year-old (32.9%) and 14-year-old (22.6%). More girls had higher educated mothers and less educated fathers (< 0.05). Most children used the toothbrush to clean their teeth but; more boys used miswak exclusively, cleaned their teeth, and visited the dentist less frequently than the girls (Table
1).
Table 1
Frequency distribution of socio-demographic characteristics and oral hygiene behaviors, by gender (N = 700)
Age | 0.02 |
12 years | 312 (44.6%) | 155 (42.9%) | 157 (42.5%) | |
13 years | 230 (32.9%) | 135 (37.4%) | 95 (28.0%) | |
14 years | 158 (22.6%) | 71 (19.6%) | 87 (26.6%) | |
Mean (SD) | 12.78 (0.79) | 12.77 (0.76) | 12.79 (0.82) | 0.7 |
Location | 0.1 |
Urban | 294 (42.0%) | 140 (38.7%) | 154 (45.4%) | |
Rural | 406 (58.0%) | 221 (61.2%) | 185 (54.6%) | |
Mother’s education1 | 0.01 |
Uneducated | 40 (5.7%) | 30 (8%) | 10 (2.9%) | |
Secondary School | 151 (21.6%) | 82 (22.7%) | 69 (20.3%) | |
High school | 362 (51.7%) | 180 (49.8%) | 182 (53.7%) | |
Graduate | 147 (20.7%) | 69 (19.4%) | 78 (23%) | |
Father’s education2 | 0.01 |
High school | 331 (47.3%) | 153 (42.4%) | 178 (52.5%) | |
Graduate | 320 (45.7%) | 185 (51.2%) | 135 (39.8%) | |
Post graduate | 49 (7.0%) | 23 (6.4%) | 26 (7.6%) | |
Oral hygiene tools |
Miswak only | 99 (14.1%) | 66 (18.3%) | 33 (9.7%) | < 0.0013 |
toothbrush only | 566 (80.9%) | 272 (75.3%) | 294 (86.7%) | |
Both | 35 (5.0%) | 23 (6.4%) | 12 (3.5%) | |
Frequency of teeth cleaning |
Irregular | 150 (21.4%) | 60 (16.6%) | 90 (26.5%) | < 0.0013 |
Once/day | 375 (53.6%) | 212 (58.7%) | 163 (48.0%) | |
≥ Twice per day | 175 (25.0%) | 89 (24.6%) | 86 (25.4%) | |
Last visit to a dentist (in the past year) |
Never | 24 (3.4%) | 0 | 24 (7.1%) | < 0.0013 |
Once | 294 (42%) | 176 (48.7%) | 118 (34.8%) | |
Twice or more | 382 (54.6%) | 185 (51.2%) | 197 (58.1%) | |
The prevalence of caries experience (DMFT ≥ 1) in the sample was 34.4% with a mean DMFT score of 3.8 (SD = 0.75). The DMFT and FT scores were significantly lower in boys than girls but by a very small difference. There were more girls with missing and filled teeth and, more severe plaque and gingival statuses compared to boys (Table
2). In the self-perceived OH conditions, more girls than boys reported having tooth decay, tooth extraction, and halitosis and; more boys than girls had discoloured teeth, mobile teeth, and fractured teeth (Table
3).
Table 2
Frequency distribution of clinically examined oral health problems, by gender (N = 700)
Decay prevalence (1 + D) |
Yes | 241 (34.4%) | 119 (33.0%) | 122 (36.0%) | 0.4 |
No | 459 (65.6%) | 242 (67.0%) | 217 (64.0%) | |
Missing prevalence (1 + M) | < 0.001 |
Yes | 142 (20.3%) | 42 (11.6%) | 100 (29.5%) | |
No | 558 (79.7%) | 319 (88.4%) | 239 (70.5%) | |
Filled prevalence (1 + F) | < 0.001 |
Yes | 172 (24.6%) | 34 (9.4%) | 138 (40.7%) | |
No | 528 (75.4%) | 327 (90.6%) | 201 (59.3%) | |
DMFT—mean (SD) | 3.8 (0.75) | 3.54 (0.63) | 4.06 (0.77) | < 0.001 |
Decay severity (DT)—mean (SD) | 1.31 (1.81) | 1.29 (1.83) | 1.33 (1.80) | 0.7 |
Missing severity (MT)—mean (SD) | 0.95 (1.38) | 0.97 (1.25) | 0.92 (1.50) | 0.6 |
Filled severity (FT)—mean (SD) | 1.46 (1.57) | 1.22 (1.41) | 1.73 (1.69) | < 0.001 |
Gingival Index | 0.03 |
Normal gingiva | 573 (81.9%) | 303 (84%) | 270 (79.6%) | |
Mild inflammation | 72 (10.3%) | 39 (10.8%) | 33 (9.7%) | |
1Moderate/severe inflammation | 55 (7.8%) | 19 (5.2%) | 36 (10.6%) | |
Plaque Index | 0.002 |
Absence of plaque | 443 (63.3%) | 251 (69.5%) | 192 (56.6%) | |
Mild accumulation | 124 (17.7%) | 52 (14.4%) | 72 (21.2%) | |
1Moderate/severe accumulation | 133 (19%) | 58 (16%) | 75 (22.1%) | |
Table 3
Frequency distribution of self-perceived oral health problems, by gender (N = 700)
Tooth decay | 257 (36.7%) | 111 (30.7) | 146 (43.0%) | < 0.01 |
Tooth ache | 231 (33.0%) | 112 (31.0%) | 119 (35.1%) | 0.3 |
Tooth discoloration | 172 (24.6%) | 107 (29.6%) | 65 (19.2%) | < 0.01 |
Tooth extraction | 73 (10.4%) | 10 (2.8%) | 63 (18.6%) | 0.00 |
Tooth sensitivity | 70 (10.0%) | 39 (10.8%) | 31 (9.1%) | 0.3 |
Tooth mobility | 55 (7.9%) | 44 (12.2%) | 11 (3.2%) | 0.00 |
Halitosis | 46 (6.6%) | 16 (4.4%) | 30 (8.8%) | 0.02 |
Abnormally shaped tooth | 45 (6.4%) | 21 (5.8%) | 24 (7.1%) | 0.5 |
Tooth extrusion | 43 (6.1%) | 21 (5.8%) | 22 (6.5%) | 0.7 |
Mal-aligned teeth | 41 (5.9%) | 18 (5%) | 23 (6.8%) | 0.3 |
Bleeding gums | 41 (5.9%) | 20 (5.5%) | 21 (6.2%) | 0.7 |
Swollen gums | 39 (5.6%) | 17 (4.7%) | 22 (6.5%) | 0.2 |
Fractured teeth | 35 (5.0%) | 27 (7.5%) | 8 (2.6%) | < 0.01 |
About 40% of the children had at least one impacted daily performance (1 + performance) (Table
4). Only a few children had frequent, and none had a severely impacted daily performance. The mean oral impact score (OIS) was calculated for the overall sample and also for the impacted only. Both these values varied significantly, and the mean OIS was higher in the impacted only (Table
4); the OIS of 1 + performance of sample considering impacted only was twice the value (10.51) to that of the overall sample (5.25). Based on the prevalence score, study activity was the most reported impacted daily performance (38%) and also had higher mean oral impact scores (mean
overall sample = 1.4 and mean
impacted only = 3.9). The impact of OH conditions on speaking, cleaning teeth, emotion, and smiling performances were not reported in almost all the children,
Table 4
Frequency, prevalence, severity, and oral impact scores of the daily performances (N = 700)
Frequency in past 3 months n (%) |
Not at all | 420 (60.0) | 545 (77.9) | 699 (99.9) | 699 (99.9) | 486 (69.4) | 699 (99.9) | 699 (99.9) | 429 (61.3) | 553 (79.0) |
Once | 208 (29.7) | 45 (6.4) | 0 | 0 | 80 (11.4) | 0 | 0 | 81 (11.6) | 68 (9.7) |
Two times | 34 (4.9) | 73 (10.4) | 0 | 0 | 79 (11.3) | 0 | 0 | 104 (14.9) | 48 (6.9) |
Three times or more | 38 (5.4) | 37 (5.3) | 1 (0.1) | 1 (0.1) | 55 (7.9) | 1 (0.1) | 1 (0.1) | 86 (12.3) | 31 (4.4) |
Prevalence n (%) | 280 (40.0) | 155 (22.1) | 1 (0.1) | 1 (0.1) | 214 (30.6) | 1 (0.1) | 1 (0.1) | 266 (38.0) | 147 (21.0) |
Severity in past 3 months n (%) |
Not at all | 426 (60.9) | 546 (78) | 699 (99.9) | 699 (99.9) | 486 (69.4) | 699 (99.9) | 699 (99.9) | 429 (61.3) | 553 (79) |
Little | 218 (31.1) | 24 (3.4) | 0 | 0 | 67 (9.6) | 0 | 0 | 54 (7.7) | 112 (16) |
Moderate | 56 (8) | 130 (18.6) | 1 (0.1) | 1 (0.1) | 147 (21) | 1 (0.1) | 1 (0.1) | 217 (31) | 35 (5) |
Severe | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0 |
Oral Impact Score |
Range (minimum–maximum) | 0–48 | 0–6 | 0–6 | 0–6 | 0–6 | 0–6 | 0–6 | 0–6 | 0–6 |
Mean (SD) | 5.25 (8.36) | 0.82 (1.73) | – | – | 1.04 (1.89) | – | – | 1.44 (2.17) | 0.48 (1.19) |
Oral Impact Score (Impacted only) |
Range (minimum–maximum) | 0–24 | 0–6 | 0–6 | 0–6 | 0–6 | 0–6 | 0–6 | 0–6 | 0–6 |
Mean (SD) | 10.51 (16.73) | 3.73 (1.66) | – | – | 3.40 (1.92) | – | – | 3.88 (1.78) | 2.31 (1.59) |
The OIS for each daily performance was considered as the outcome variable and simple linear regressions were carried out to report the regression coefficients (RC). In general, dental caries, gingival and plaque indices from the clinical measures and; tooth decay and toothache from the self-perceived measures were significantly associated with the impacted daily performances (Table
5). The caries measures; DT, DMFT, 1 + D and self-perceived tooth decay were associated with greater OIS of 1 + performance, eating, sleeping, study, and social contact (RC
range = 0.3–13.7) and; the treatment measures MT, FT, and 1 + M were associated with lower OIS of daily performances (RC
range = − 1.9 to − 0.1). Poorer gingival and plaque statuses were also associated with greater OIS (RC
range = 0.5–7.7). Other self-perceived indicators associated with most of the impacted daily performances were toothache and tooth discolouration (Table
5).
Table 5
Simple linear regression for association between oral impact scores of daily performances and oral health measures (N = 700)
Clinical OHS |
Decay severity (DT) | 3.3 (3.09, 3.59)b | 0.6 (0.51, 0.63)b | 0.6 (0.59, 0.71)b | 0.8 (0.75, 0.88)b | 0.3 (0.31, 0.39)b |
Missing severity (MT) | − 1.5 (− 1.97, − 1.07)b | − 0.3 (− 0.40, − 0.22)b | − 0.2 (− 0.35, − 0.15)b | − 0.4 (− 0.50, − 0.27)b | − 0.1 (− 0.20, − 0.07)b |
Filled severity (FT) | − 1.9 (− 2.37, − 1.62)b | − 0.3 (− 0.42, − 0.26)b | − 0.3 (− 0.43, − 0.26)b | − 0.5 (− 0.59, − 0.40)b | − 0.3 (− 0.31, − 0.21)b |
DMFT | 5.4 (4.70, 6.19)b | 0.7 (0.57, 0.89)b | 1.4 (1.25, 1.56)b | 1.3 (1.10, 1.48)b | 0.4 (0.31, 0.53)b |
Decay prevalence (1 + D) | 13.3 (12.44, 14.24)b | 2.2 (2.00, 2.43)b | 2.7 (2.51, 2.94)b | 3.2 (3.00, 3.48)b | 1.3 (1.17, 1.48)b |
Missing prevalence (1 + M) | 0.6 (− 0.97, 2.19) | − 0.4 (− 0.69, − 0.05)a | 0.6 (0.29, 0.98)b | 0.04 (− 0.35, 0.44) | 0.2 (− 0.05, 0.39) |
Filled prevalence (1 + F) | − 0.3 (− 1.76, 1.19) | − 0.1 (− 0.45, 0.14) | 0.4 (0.05, 0.70)a | − 0.1 (− 0.45, 0.29) | − 0.5 (− 0.69, − 0.29)b |
Gingival index | 5.9 (4.95, 6.91)b | 0.6 (0.41, 0.83)b | 1.1 (0.89, 1.33)b | 1.9 (1.65, 2.15)b | 0.5 (0.34, 0.63)b |
Plaque index | 7.7 (7.17, 8.30)b | 1.4 (1.26, 1.51)b | 1.6 (1.53, 1.79)b | 1.8 (1.64, 1.94)b | 0.6 (0.55, 0.75)b |
Self-perceived OHS |
Tooth decay | 13.7 (12.87, 14.55)b | 2.2 (1.95, 2.38)b | 2.8 (2.61, 3.02)b | 3.6 (3.39, 3.79)b | 1.2 (1.05, 1.37)b |
Toothache | 15.0 (14.26, 15.79)b | 2.4 (2.25, 2.65)b | 3.1 (2.96, 3.34)b | 3.8 (3.58, 3.97)b | 1.3 (1.17, 1.49)b |
Tooth extraction | − 1.4 (− 3.52, 0.64) | − 0.7 (− 1.16, − 0.33)b | 0.03 (− 0.43, 0.49) | − 0.10 (− 0.62, 0.43) | − 0.2 (− 0.48, 0.10) |
Tooth sensitivity | − 0.05 (− 2.17, 2.07) | − 0.3 (− 0.73, 0.12) | − 0.2 (− 0.69, 0.25) | 0.3 (− 0.20, 0.87) | 0.2 (− 0.10, 0.49) |
Tooth discoloration | 2.3 (0.81, 3.74)a | 0.7 (0.40, 0.98)b | 0.5 (0.14, 0.79)a | 0.2 (− 0.19, 0.56) | 0.3 (0.14, 0.55)a |
Fractured teeth | − 3.1 (− 6.07, − 0.25)a | − 0.5 (− 1.08, 0.09) | − 0.7 (− 1.32, 0.03)a | − 0.7 (− 1.38, 0.09) | − 0.4 (− 0.82, − 0.02)a |
Abnormal shaped | − 1.05 (− 3.64, 1.54) | − 0.2 (− 0.78, 0.27) | − 0.3 (− 0.92, 0.22) | − 0.1 (− 0.80, 0.51) | 0.03 (− 0.33, 0.39) |
Mal-aligned teeth | − 0.4 (− 3.16, 2.26) | − 0.1 (− 0.69, 0.40) | 0.3 (− 0.33, 0.87) | − 0.4 (− 1.08, 0.29) | − 0.02 (− 0.40, 0.35) |
Bleeding gums | − 1.8 (− 4.52, 0.89) | − 0.5 (− 1.05, 0.01) | − 0.5 (− 1.11, 0.09) | − 0.2 (− 0.84, 0.53) | − 0.1 (− 0.48, 0.28) |
Swollen gums | − 1.5 (− 4.31, 1.23) | − 0.4 (− 0.99, 0.13) | − 0.5 (− 1.09, 0.13) | − 0.09 (− 0.79, 0.61) | − 0.1 (− 0.46, 0.31) |
Halitosis | − 0.02 (− 2.59, 2.55) | − 0.2 (− 0.74, 0.29) | − 0.1 (− 0.66, 0.48) | 0.4 (− 0.21, 1.08) | − 0.1 (− 0.46, 0.26) |
Tooth mobility | − 3.0 (− 5.37, − 0.66)a | − 0.8 (− 1.28, − 0.33)a | − 0.3 (− 0.82, 0.22) | − 0.7 |(− 1.27, − 0.08)a | − 0.03 (− 0.67, 0.02)a |
Tooth extrusion | 0.5 (− 2.14, 3.16) | − 0.2 (− 0.71, 0.36) | 0.1 (− 0.50, 0.67) | − 0.05 (0.72, 0.62) | − 0.04 (− 0.41, 0.32) |
SD |
Gender (Male) | 2.0 (0.78, 3.31)a | 0.2 (− 0.01, 0.50) | 0.4 (0.08, 0.64)a | 0.6 (0.25, 0.88)a | 0.2 (0.05, 0.40)a |
Location (Rural) | − 2.6 (− 3.86, − 1.31)b | − 0.4 (− 0.63, − 0.12)a | − 0.4 (− 0.65, − 0.09)a | − 0.8 (− 0.11, − 0.47)b | − 0.4 (− 0.56, − 0.21)b |
Mothers education | − 0.8 (− 1.58, − 0.01)a | − 0.02 (− 0.18, 0.14) | − 0.2 (− 0.42, − 0.07)a | − 0.2 (− 0.41, − 0.02)a | − 0.1 (− 0.26, − 0.04)a |
Fathers education | 1.5 (0.46, 2.49)a | 0.5 (0.30, 0.71)b | 0.1 (− 0.12, 0.33) | 0.2 (− 0.03, 0.48) | 0.1 (− 0.04, 0.24) |
OHB |
Mode of brushing |
Miswak | -.3.7 (− 5.54, − 1.93)b | − 0.6 (− 0.99, − 0.27)a | − 0.7 (− 1.12, − 0.32)b | − 0.8 (− 1.34, − 0.42)b | − 0.4 (− 0.67, − 0.17)a |
Toothbrush | 4.4 (2.82, 5.99)b | 0.7 (0.44, 1.08)b | 0.9 (0.55, 1.25)b | 0.9 (0.58, 1.38)b | 0.5 (0.27, 0.71)b |
Both | − 4.8 (− 7.68, − 1.89)a | − 0.8 (− 1.44, − 0.27)a | − 1.1 (− 1.74, − 0.45)a | − 0.9 (− 1.68, − 0.21)a | − 0.5 (− 0.91, − 0.11)a |
Frequency of brushing | − 6.5 (− 7.35, − 5.75)b | − 0.9 (− 1.10, − 0.75)b | − 1.3 (− 1.49, − 1.12)b | − 1.9 (− 2.08, − 1.70)b | − 0.6 (− 0.71, − 0.47)b |
Dental visit | 3.0 (2.48, 3.52)b | 0.5 (0.41, 0.63)b | 0.7 (0.54, 0.78)b | 0.7 (0.53, 0.80)b | 0.2 (0.18, 0.33)b |
Association findings of demographic characteristics showed that an increase in the education level of mothers and children living in rural areas, were associated with lower OIS. For oral hygiene behaviours; children using miswak exclusively and, using both miswak and toothbrush had lower OIS (RCrange = − 4.8 to − 0.4). Similarly, an increase in the frequency of brushing was associated with lower OIS (RCrange = − 6.5 to − 0.6). Lastly, children with less frequent visit to the dentists were associated with greater OIS (RCrange = 0.5 to 3.0).
The results of multiple linear regression analyses are presented in Table
6. Based on the magnitude and precision of adjusted regression coefficients (RC), the clinical OH measure that was identified as a better predictor of greater OIS was decay severity (DT), with RC values ranging between 0.3 (social contact) and 2.4 (1 + performance). The DMFT (Adjusted RC
range = 0.2 to 3.7) was the next best predictor, however, DMFT includes MT and FT components which were associated with lower OIS. Overall, the self-perceived measures were also associated with OIS and presented similar findings to that of the clinical measures. The tooth decay, toothache, and tooth discolouration were associated with greater OIS in all or most of the daily performances; whereas, tooth extraction, tooth sensitivity, fractured teeth, and tooth mobility were associated with lower OIS (Table
6).
Table 6
Multiple linear regression for the effects of oral health measures on the oral impact scores of daily performances after adjusting for the significant covariates (N = 700)
Decay severity (DT) | 2.4 (2.15, 2.68)2 | 0.4 (0.39, 0.52)2 | 0.4 (0.39, 0.52)2 | 0.5 (0.46, 0.59)2 | 0.3 (0.23, 0.32)2 |
Gender (male) | 1.3 (0.31, 1.94)1 | – | – | 0.3 (0.11, 0.51)1 | 0.1 (0.00, 0.30)1 |
Location (rural) | − 2.1 (− 2.95, − 1.22)2 | − 0.2 (− 0.44, − 0.02)1 | − 0.3 (− 0.53, − 0.10)1 | − 0.8 (− 0.99, − 0.57)2 | − 0.3 (− 0.44, − 0.13)2 |
Frequency of brushing | − 3.7 (− 4.41, − 3.07)2 | − 0.4 (− 0.55, − 0.22)2 | − 0.7 (− .0.91, − 0.57)2 | − 1.3 (− 1.49, − 1.16)2 | − 0.3 (− 0.42, − 0.18)2 |
Dental visit | 1.2 (0.94, 1.61)2 | 0.2 (0.13, 0.32)2 | 0.3 (0.23, 0.43)2 | 0.2 (0.13, 0.32)2 | – |
Clinical problems |
Decay severity (DT) | 2.4 (2.15, 2.68)2,GLFD | 0.4 (0.37, 0.50)2,EFD | 0.5 (0.39, 0.52)2,EFDLZG | 0.5 (0.46, 0.59)2,DFZMLG | 0.3 (0.22, 0.32)2,DFZMXLG |
Missing severity (MT) | − 0.9 (− 1.28, − 0.58)2,LFD | − 0.2 (− 0.28, − 0.10)2,EFDL | − 0.1 (− 0.20, − 0.03)1,FDLZ | − 0.2 (− 0.31, − 0.14)2,DFZXLG | − 0.10 (− 0.15, − 0.03)2,DFZMXL |
Filled severity (FT) | − 1.1 (− 1.38, − 0.73)2,GLFD | − 0.2 (− 0.26, − 0.12)2,EFDLZ | − 0.1 (− 0.23, − 0.10)2,FDLZ | − 0.2 (− 0.31, − 0.16)2,DFZLG | − 0.2 (− 0.24, − 0.13)2,DFZXLG |
Decay prevalence (1 + D) | 10.0 (8.99, 10.96)2,GLFD | 1.7 (1.42, 1.94)2,EFDL | 2.0 (1.79, 2.30)2,FDLZ | 2.2 (1.96, 2.43)2,DFZMLG | 1.0 (0.83, 1.20)2,DFZXLG |
Missing prevalence (1 + M) | – | − 0.3 (− 0.57, − 0.11)1,EFDL | 0.6 (0.28, 0.85)2,FDLZ | – | – |
DMFT | 3.7 (3.03, 4.39)2,GLFD | 0.5 (0.32, 0.65)2,EFDLM | 1.2 (1.10, 1.38)2,FDLZMG | 0.8 (0.66, 0.98)2,DFZML | 0.2 (0.10, 0.32)2,DFZXL |
Gingival index | 2.0 (1.21, 2.76)2,GLFD | 0.5 (0.33, 0.75)2,EMT | 0.4 (0.23, 0.64)2,FDLZ | 1.1 (0.88, 1.26)2,DFZXLG | 0.2 (0.05, 0.34)1,DFZXL |
Plaque index | 5.3 (4.76, 5.87)2,LFD | 1.2 (1.08, 1.34)2,EMFL | 1.3 (1.21, 1.49)2,FDLZ | 1.3 (1.15, 1.43)2,DFZL | 0.5 (0.41, 0.61)2,FZXL |
– | | | | | |
Tooth decay | 11.1 (10.13, 12.16)2,LFD | 1.8 (1.59, 2.10)2,EMFL | 2.4 (2.16, 2.62)2,FDZ | 2.7 (2.45, 2.91)2,DFZML | 0.8 (0.65, 1.05)2,DFZXL |
Toothache | 12.8 (11.87, 13.70)2,GLFD | 2.3 (2.06, 2.48)2,EML | 2.8 (2.60, 3.03)2,FDZG | 2.9 (2.65, 3.10)2,DFZMLG | 1.0 (0.84, 1.24)2,DFXLG |
Tooth extraction | – | − 0.4 (− 0.77, − 0.01)1,EFDL | – | – | – |
Tooth sensitivity | – | − 0.5 (− 0.84, − 0.11)1,EFDL | − 0.4 (− 0.80, − 0.02)1,FDLZ | – | – |
Tooth discoloration | 2.0 (0.78, 3.19)1,LFD | 0.3 (− 0.59, − 0.11)1,EFD | 0.5 (0.18, 0.75)1,FDLZM | – | 0.3 (0.13, 0.53)1,DFZMXLG |
Fractured teeth | − 2.9 (− 5.76, 0.01)1,L | – | − 0.7 (− 1.32, 0.03)1 | − | − 0.4 (− 0.82, − 0.02)1 |
Tooth mobility | − 3.5 (− 5.84, − 1.16)1,L | − 0.5 (− 0.96, − 0.10)1,EFL | – | − 0.9 (− 1.53, − 0.36)2,MXLG | − 0.3 (− 0.62, − 0.01)1,FMXL |
Discussion
The present study identified the oral health (OH) conditions and their measures that are associated with greater oral impact scores (OIS) of the daily performances, and the investigation included a wide range of OH conditions that commonly affect adolescent-aged children [
21]. This approach of using OIS rather than presence or absence of impact as the outcome variable is unique. Despite OIS being stated as a comprehensive measure by the founders of C-OIDP and includes prevalence, frequency, and severity of impacts [
4], no earlier report had used it as the patient reported outcome measure. There is a difference in analyses and interpretation; for instance, Kumar and colleagues carried out logistic regression to state that children with caries had about 6-times greater chance of having an impact on daily performance than caries-free children [
22]. Contrastingly, in this study through linear regression, it is shown that by a unit increase in decay severity (DT) the oral impact score (OIS) will increase by two units.
About 40% of the children in the current study reported at least one impacted daily performance. Taking this into account, the current study refined the method of calculating OIS by Gherunpong et al. [
4] and states that differentiation should be drawn between the report from all samples and those who reported an impact. Findings from this study demonstrate that the mean value is refined if only the children who had reported to be impacted are considered instead of the whole study sample. For instance, using the original method by Gherunpong and colleagues [
4], the impact on the study had the highest mean OIS among the eight performances (1.44 ± 2.17). However, by considering only the children who reported an impact the mean OIS for study performance increased noticeably (3.88 ± 1.78).
Impacted study or school-work was reported by a majority (38%) of the children in this study, and it was associated with several self-perceived and clinically assessed OH measures. This finding is consistent with studies performed in the United States [
23,
24], Thailand [
4,
25], Malaysia [
8] and Indonesia [
26]. However, the methodology of some studies [
23,
26] has been questioned and discussed in a published commentary [
27]. Further evidence from explicit investigations could offer a comprehensive understanding on the relationship between OH conditions and school performance.
Caries related clinical and self-perceived measures are observed to be consistent in demonstrating an association with oral impact scores for each daily performance and the 1 + performance. However, measures related to treatment, such as missing and filled teeth prevalence (1 + M and 1 + F) and severity (MT and FT), and self-perceived tooth extraction showed protective effects. From caries measures related to untreated disease condition, such as 1 + D, DT, and toothdecay, the clinical OH measures examined and reported by trained dentists are fairly reliable. This is because, OH conditions diagnosed by children may depend on factors such as oral health literacy, whereby, children with better OH literacy are more likely to provide an accurate response [
28]. Between the two clinical measures related to untreated caries i.e. DT and 1 + D, the former provided better estimation of the association with reduced standard errors and narrower confidence intervals. This finding was consistent in all the analysed models having oral impact scores of each impacted daily performances as the outcome variables. These appraisals of OH measures are exclusive, and therefore, the findings cannot be explicitly compared to the earlier reports. Moreover, the earlier investigations involving clinical examinations were carried out on a comparitively younger population (less than 9 years of age) and the responses of questions pertaining to OHRQoL were obtained from parents or guardians [
29,
30], and were performed on children with special needs [
30,
31]. Karki et al. reported their findings using the same C-OIDP questionnaire for 5–6-year-olds, 12-year-olds and 15-year-olds [
9], when the original version was constructed and validated for children of age 11 years and older [
4], suggesting that the C-OIDP protocol was not followed.
As secondary findings, the current study reveals that nearly 34% of the children had untreated caries, and this finding was consistent with previous studies performed in the same region [
32‐
34]. The risk of sepsis and pain from a decayed tooth is considerably greater, and Marcenes et al. concluded that if decay among children is not prevented then the burden of disease will further affect the life events of children as well as impact heavily on the economy of a nation via the cost of treatment services [
35].
There are several strengths of the current study. The findings were derived from a homogenized population and analyses controlled for demographics such as age, gender, and parental education. The assessment of impacted daily performances was performed using language validated [
6] and culturally tested [
36] C-OIDP questionnaire. Also, a wide variety of the OH conditions were considered using the clinical observations and self-perception to determine the OH conditions and their measures that influence daily performances of schoolchildren [
37]. However, the current study does not come without limitations. As the design is cross-sectional, the causal association between the OH conditions and the impacted daily performances cannot be established. Impacts on speaking, cleaning teeth, emotion, and smiling performances were not reported in almost all the children, and this common response from children is supported by the evidence that
respondents in a cluster tend to have similar views on OH and behaviour and is similar to another published report [
38].
In conclusion, the untreated tooth decay significantly impacted the daily performances of school-going children, especially their eating, sleeping, study, and social contact. Decay severity demonstrated more precise results in comparison to other oral health measures. Besides, the disease experience measures and the treatment measures showed opposing results. These findings are of importance to researchers, policymakers, oral health providers, and public health analysts; for understanding, reporting, treating, and preventing persistent OH conditions among the school-going children, and eventually contributing towards better oral health-related quality of life.
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