| Literature DB >> 18664245 |
Ahmed S Al-Mandhari1, Mohammed A Al-Shafaee, Mohammed H Al-Azri, Ibrahim S Al-Zakwani, Mushtaq Khan, Ahmed M Al-Waily, Syed Rizvi.
Abstract
BACKGROUND: Errors have been the concern of providers and consumers of health care services. However, consumers' perception of medical errors in developing countries is rarely explored. The aim of this study is to assess community members' perceptions about medical errors and to analyse the factors affecting this perception in one Middle East country, Oman.Entities:
Mesh:
Year: 2008 PMID: 18664245 PMCID: PMC2531120 DOI: 10.1186/1472-6939-9-13
Source DB: PubMed Journal: BMC Med Ethics ISSN: 1472-6939 Impact factor: 2.652
Participants' perceived definitions of medical errors
| 1 | Wrong prescription/dispensing of medication | Wrong medication | 93 (34) |
| 2 | Wrong diagnosis | Wrong diagnosis | 73 (26.5) |
| 3 | Doctors' technical in-competence | Wrong surgery | 36 (13) |
| Technical incompetence* | 10 (3.6) | ||
| Lack of doctor's experience* | 7 (3) | ||
| 4 | Other staff technical in-competence (nurses and pharmacist) | Giving wrong injection | 11 (4) |
| Pharmacist incompetence* | 4 (1) | ||
| 5 | Others | Errors by doctors | 5 (2) |
| Forgotten surgical items | 2 (0.7) | ||
| Wrong vaccination | 2 (0.7) | ||
| IV canula left in site for 25 days | 1 (0.4) | ||
| Error in first aid | 1 (0.4) | ||
| Wrong BP reading | 1 (0.4) | ||
| Wrong procedure | 1 (0.4) | ||
| Doctor ignorance* | 14 (5) | ||
| Poor staff attitude* | 4 (1) | ||
| Not updating patients* | 2 (0.7) | ||
| Faulty equipment* | 1 (0.4) | ||
| Doctors overload* | 1 (0.4) | ||
| Slowness in giving care* | 1 (0.4) | ||
| Nurses ignorance* | 1 (0.4) | ||
| Wrong information by the patient+ | 1 (0.4) | ||
| Not following doctors advise+ | 1 (0.4) | ||
| Intake of un-prescribed medicine+ | 1 (0.4) | ||
| Intake of herbal medicine+ | 1 (0.4) | ||
Percents are out of total number (275). Please notice that some participants gave more than one definition.
* Causes of medical errors
+ Patient-related factor
Univariate and multivariate logistic regression models (N = 212).
| Age | 212 | 0.94 [0.91–0.96] | <0.001 | 0.96 [0.93–0.99] | 0.045 |
| Male gender | 112 | 0.63 [0.32–1.22] | 0.169 | 0.82 [0.36–1.85] | 0.629 |
| Educational level | |||||
| Illiterate | 35 | Ref | |||
| Preparatory | 147 | 4.20 [1.92–9.19] | <0.001 | 1.70 [0.61–4.77] | 0.314 |
| Secondary & above | 30 | 8.50 [2.17–33.3] | 0.002 | 1.58 [0.28–8.88] | 0.603 |
| Married | 148 | 0.33 [0.14–0.79] | 0.012 | 0.45 [0.15–1.31] | 0.144 |
| Family income | |||||
| <200 | 66 | Ref | |||
| 200–500 | 102 | 2.19 [1.08–4.43] | 0.029 | 1.99 [0.87–4.55] | 0.104 |
| >500 | 44 | 5.35 [1.70–16.8] | 0.004 | 4.73 [1.37–16.4] | 0.014 |
N = Number of participants in each category; CI = Confidence Interval; the variables were entered into the multivariate logistic regression model simultaneously; p-values were generated using both univariate and multivariate logistic regression models
Socio-demographic and educational variables of the study participants stratified by perceived knowledge of medication error definition (N = 212).
| Age, mean ± SD, in years | 43 ± 17 | 31 ± 11 | <0.001 |
| Age category, n (%) | |||
| 15–24 years | 5 (11%) | 47 (28%) | <0.001 |
| 25–34 years | 10 (21%) | 67 (41%) | |
| 35–44 years | 11 (23%) | 27 (16%) | |
| >44 years | 21 (45%) | 24 (15%) | |
| Gender, n (%) | |||
| Female | 18 (38%) | 82 (50%) | 0.167 |
| Male | 29 (62%) | 83 (50%) | |
| Educational Level, n (%) | |||
| Illiterate | 17 (36%) | 18 (11%) | <0.001 |
| Reads & writes/preparatory | 27 (57%) | 120 (72%) | |
| Secondary and above | 3 (6%) | 27 (16%) | |
| Marital Status, married, n (%) | 40 (85%) | 108 (65%) | 0.010 |
| Family Income, n (%), in OR | |||
| <200 | 23 (49%) | 43 (26%) | 0.004 |
| 200 – 500 | 20 (43% | 82 (50%) | |
| >500 | 4 (9%) | 40 (24%) | |
| Usual Source of Healthcare, n (%) | |||
| Local Health Center | 33 (70%) | 108 (65%) | 0.272 |
| Local Hospital | 6 (13%) | 20 (12%) | |
| Private Hospital | 7 (15%) | 37 (22%) | |
| Others (e.g. Traditional Healer) | 1 (2%) | 0 (0%) | |
| Frequency of Healthcare Use, n (%) | |||
| 1–5 | 2 (4.3%) | 13 (7.9%) | 0.787 |
| 6–10 | 21 (45%) | 72 (44%) | |
| >10 | 24 (51%) | 80 (48%) | |
| History of Chronic Disease, n (%) | 22 (47%) | 75 (45%) | 0.869 |
| Seeing a Doctor Regularly, n (%) | 26 (55%) | 98 (59%) | 0.617 |
SD = Standard deviation; Percents are column percents; OR = Omani Rials; Differences between groups were analyzed using Student's t-test, Pearson's χ2 test, and Fisher's Exact test whenever appropriate.
Participant responses to a list of causes of medical errors
| Uncaring health care professional | 80 (48.5) | 85 (51.5) |
| Lack of training | 76 (46) | 89 (54) |
| Work overload | 70 (42) | 95 (58) |
| Lack of time spend with the patient | 64 (39) | 101 (61) |
| Shortage of doctors | 57 (34.5) | 108 (65.5) |
| Poor handwriting | 37 (22) | 128 (78) |
| Poor supervision | 33 (20) | 132 (80) |
| Complexity of medical care | 26 (16) | 139 (84) |
| Shortage of paramedical | 24 (14.5) | 141 (85.5) |
| Shortage of nurses | 21 (13) | 144 (87) |
| Lack of computerized medical record | 11 (7) | 154 (93) |