Depression, Anxiety and Stress Among Students at the University of Pristina-Kosovska Mitrovica, Kosovo and Metohija, Serbia
Abstract
1. Introduction
2. Materials and Methods
3. Results
4. Discussion
4.1. Depressive Symptoms
4.2. Anxiety Symptoms
4.3. Stress Symptoms
4.4. Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| Characteristics | Total N (%) |
|---|---|
| Faculty (N = 657) | |
| Faculty of physical education | 32 (4.9) |
| Natural and mathematical sciences faculty | 47 (7.2) |
| Faculty of technical sciences | 39 (5.9) |
| Teachers’ faculty | 49 (7.5) |
| Faculty of agriculture | 52 (7.9) |
| Faculty of economics | 100 (15.2) |
| Faculty of medicine | 188 (28.6) |
| Faculty of law | 41 (6.2) |
| Faculty of philosophy | 109 (16.6) |
| Type of residence (N = 596) | |
| Urban | 303 (50.8) |
| Rural | 293 (49.2) |
| Sex (N = 653) | |
| Male | 208 (31.9) |
| Female | 445 (68.1) |
| Age in years X ± SD (N = 615) | 21.70 ± 3.97 |
| Relationship status (N = 649) | |
| Single | 354 (54.5) |
| Married/in a relationship | 295 (45.5) |
| GPA X ± SD (N = 392) | 7.94 ± 1.12 |
| Self-rated financial status (N = 647) | |
| Poor | 23 (3.6) |
| Average | 253 (39.1) |
| Good | 371 (57.3) |
| Family relationships (N = 648) | |
| Poor | 14 (2.2) |
| Average | 73 (11.3) |
| Good | 561 (86.6) |
| Self-rated health (N = 633) | |
| Poor | 13 (2.1) |
| Average | 100 (15.8) |
| Good | 520 (82.1) |
| Tobacco smoking (N = 657) | |
| Yes | 107 (16.3) |
| No | 550 (83.7) |
| Use of electronic cigarettes (N = 647) | |
| Yes | 41 (6.3) |
| No | 606 (93.7) |
| Tobacco-heating products (N = 646) | |
| Yes | 13 (2.0) |
| No | 633 (98.0) |
| Alcohol consumption (N = 646) | |
| Yes | 428 (66.3) |
| No | 218 (33.7) |
| Binge drinking in the past month (N = 588) | |
| Yes | 140 (23.8) |
| No | 448 (76.2) |
| Cannabis use (N = 634) | |
| Yes | 28 (4.4) |
| No | 606 (95.6) |
| Use of anti-anxiety medications (N = 657) | |
| Yes | 98 (14.9) |
| No | 559 (85.1) |
| Mobile phone addiction (N = 657) | |
| Yes | 131 (19.9) |
| No | 526 (80.1) |
| Time spent on social media per day X ± SD (N = 641) | 4.36 ± 2.92 |
| Time spent playing video games X ± SD (N = 488) | 1.17 ± 3.06 |
| BMI ± SD (N = 631) | 22.87 ± 3.75 |
| Study engagement X ± SD (N = 599) | 35.78 ± 15.49 |
| MET-minutes/week (N = 494) | 3065.70 ± 2800.14 |
| Social support X ± SD (N = 604) | 6.06 ± 1.02 |
| PIU score X ± SD (N = 599) | 40.01 ± 12.95 |
| Impulsivity score X ± SD (N = 570) | 16.94 ± 13.62 |
| Characteristics | Score of ≥95th Percentile DASS-D N (%) | Score of <95th Percentile on DASS-D Scale N (%) | p-Value |
|---|---|---|---|
| Faculty | 0.185 | ||
| Faculty of physical education | 2 (6.3) | 30 (93.7) | |
| Natural and mathematical sciences faculty | 4 (8.5) | 43 (91.5) | |
| Faculty of technical sciences | 3 (7.7) | 36 (92.3) | |
| Teachers’ faculty | 4 (8.2) | 45 (91.8) | |
| Faculty of agriculture | 3 (5.8) | 49 (94.2) | |
| Faculty of economics | 3 (3.0) | 97 (97.0) | |
| Faculty of medicine | 23 (12.2) | 165 (87.8) | |
| Faculty of law | 7 (17.1) | 34 (82.9) | |
| Faculty of philosophy | 12 (11.0) | 97 (89.0) | |
| Type of residence | 0.041 * | ||
| Urban | 23 (7.6) | 280 (92.4) | |
| Rural | 37 (12.6) | 256 (87.4) | |
| Sex | 0.322 | ||
| Male | 16 (7.7) | 192 (92.3) | |
| Female | 45 (10.1) | 400 (89.9) | |
| Age in years X ± SD | 21.17 ± 2.29 | 21.56 ± 3.27 | 0.954 |
| Relationship status | 0.960 | ||
| Single | 32 (9.0) | 322 (91.0) | |
| Married/in a relationship | 27 (9.2) | 268 (90.8) | |
| GPA X ± SD | 8.14 ± 1.08 | 7.99 ± 1.06 | 0.414 |
| Self-rated financial status | 0.007 | ||
| Poor | 5 (21.7) | 18 (78.3) | |
| Average | 30 (11.9) | 223 (88.1) | |
| Good | 24 (6.5) | 347 (93.5) | |
| Family relationships | 0.001 | ||
| Poor | 7 (50.0) | 7 (50.0) | |
| Average | 13 (17.8) | 60 (82.2) | |
| Good | 39 (7.0) | 522 (93.0) | |
| Self-rated health | 0.001 * | ||
| Poor | 4 (30.8) | 9 (69.2) | |
| Average | 27 (27.0) | 73 (73.0) | |
| Good | 28 (5.4) | 492 (94.6) | |
| Tobacco smoking | 0.010 | ||
| Yes | 17 (15.9) | 90 (84.1) | |
| No | 44 (8.0) | 506 (92.0) | |
| Use of electronic cigarettes | 0.017 | ||
| Yes | 8 (19.5) | 33 (80.5) | |
| No | 51 (8.4) | 555 (91.6) | |
| Tobacco-heating products | 0.078 | ||
| Yes | 3 (23.1) | 10 (76.1) | |
| No | 56 (8.8) | 577 (91.2) | |
| Alcohol consumption | 0.259 | ||
| Yes | 43 (10.0) | 385 (90.0) | |
| No | 16 (7.3) | 202 (92.7) | |
| Binge drinking in the past month | 0.975 | ||
| Yes | 13 (9.3) | 127 (90.7) | |
| No | 42 (9.4) | 406 (90.6) | |
| Cannabis use | 0.001 | ||
| Yes | 8 (28.6) | 20 (71.4) | |
| No | 49 (8.1) | 557 (91.9) | |
| Use of anti-anxiety medications | 0.001 * | ||
| Yes | 22 (22.4) | 76 (77.6) | |
| No | 39 (7.0) | 520 (93.0) | |
| Mobile phone addiction | 0.001 * | ||
| Yes | 30 (22.9) | 101 (77.1) | |
| No | 31 (5.9) | 495 (94.1) | |
| Time spent on social media per day X ± SD | 4.50 ± 1.83 | 3.95 ± 2.21 | 0.007 |
| Time spent playing video games X ± SD | 0.83 ± 1.03 | 1.30 ± 4.13 | 0.940 |
| BMI ± SD | 23.03 ± 3.42 | 22.74 ± 3.70 | 0.309 |
| Study engagement X ± SD | 36.50 ± 7.94 | 34.31 ± 11.26 | 0.143 |
| MET-minutes/week | 2331.25 ± 2174.85 | 2680.68 ± 2257.72 | 0.201 |
| Social support X ± SD | 5.53 ± 1.09 | 6.13 ± 0.82 | 0.001 |
| PIU score X ± SD | 44.75 ± 7.66 | 40.99 ± 13.56 | 0.001 |
| Impulsivity score X ± SD | 24.33 ± 6.62 | 16.54 ± 12.26 | 0.001 |
| Characteristics | ≥95th Percentile on DASS-A N (%) | <95th Percentile on DASS-AN (%) | p-Value |
|---|---|---|---|
| Faculty | 0.004 | ||
| Faculty of physical education | 3 (9.4) | 29 (90.6) | |
| Natural and mathematical sciences faculty | 10 (21.3) | 37 (78.7) | |
| Faculty of technical sciences | 6 (15.4) | 33 (84.6) | |
| Teachers’ faculty | 16 (32.7) | 33 (67.3) | |
| Faculty of agriculture | 8 (15.4) | 44 (84.6) | |
| Faculty of economics | 7 (7.0) | 93 (93.0) | |
| Faculty of medicine | 43 (22.9) | 145 (77.1) | |
| Faculty of law | 12 (29.3) | 29 (70.7) | |
| Faculty of philosophy | 24 (22.0) | 85 (78.0) | |
| Type of residence | 0.083 | ||
| Urban | 53 (17.5) | 250 (82.5) | |
| Rural | 68 (23.2) | 225 (76.6) | |
| Sex | 0.006 | ||
| Male | 28 (13.5) | 180 (86.5) | |
| Female | 101 (22.7) | 344 (77.3) | |
| Age in years X ± SD | 20.93 ± 1.90 | 21.68 ± 3.43 | 0.100 |
| Relationship status | 0.340 | ||
| Single | 65 (18.4) | 289 (81.6) | |
| Married/In a relationship | 63 (21.4) | 232 (78.6) | |
| GPA X ± SD | 8.14 ± 0.96 | 7.98 ± 1.08 | 0.328 |
| Self-rated financial status | 0.002 | ||
| Poor | 11 (47.8) | 12 (52.2) | |
| Average | 45 (17.8) | 208 (82.2) | |
| Good | 72 (19.4) | 299 (80.6) | |
| Family relationships | 0.001 | ||
| Poor | 8 (57.1) | 6 (42.9) | |
| Average | 22 (30.1) | 51 (69.9) | |
| Good | 98 (17.5) | 463 (82.5) | |
| Self-rated health | 0.001 * | ||
| Poor | 5 (38.5) | 8 (61.5) | |
| Average | 48 (48.0) | 52 (52.0) | |
| Good | 71 (13.7) | 449 (86.3) | |
| Tobacco smoking | 0.003 | ||
| Yes | 32 (29.9) | 75 (70.1) | |
| No | 97 (17.6) | 453 (82.4) | |
| Use of electronic cigarettes | 0.108 | ||
| Yes | 12 (29.3) | 29 (70.7) | |
| No | 115 (19.0) | 491 (81.0) | |
| Tobacco-heating products | 0.015 | ||
| Yes | 6 (46.2) | 7 (53.8) | |
| No | 121 (19.1) | 512 (80.9) | |
| Alcohol consumption | 0.750 | ||
| Yes | 85 (19.9) | 343 (80.1) | |
| No | 41 (18.8) | 177 (81.2) | |
| Binge drinking in the past month | 0.377 | ||
| Yes | 31 (22.1) | 109 (77.9) | |
| No | 84 (18.8) | 364 (81.3) | |
| Cannabis use | 0.007 | ||
| Yes | 11 (39.3) | 17 (60.7) | |
| No | 113 (18.6) | 493 (81.4) | |
| Use of anti-anxiety medications | 0.001 * | ||
| Yes | 37 (37.8) | 61 (62.2) | |
| No | 92 (16.5) | 467 (83.5) | |
| Mobile phone addiction | 0.001 | ||
| Yes | 47 (35.9) | 84 (64.1) | |
| No | 82 (15.6) | 444 (84.4) | |
| Time spent on social media per day X ± SD | 4.12 ± 2.15 | 3.96 ± 2.15 | 0.011 |
| Time spent playing video games X ± SD | 0.72 ± 1.17 | 1.39 ± 4.38 | 0.643 |
| BMI ± SD | 22.84 ± 3.50 | 22.75 ± 3.72 | 0.890 |
| Study engagement X ± SD | 32.31 ± 9.84 | 34.94 ± 11.29 | 0.019 |
| MET-minutes/week | 2197.20 ± 1756.45 | 2759.55 ± 2336.55 | 0.149 |
| Social support X ± SD | 5.74 ± 1.10 | 6.16 ± 0.78 | 0.001 * |
| PIU score X ± SD | 44.06 ± 14.22 | 40.62 ± 13.00 | 0.001 |
| Impulsivity score X ± SD | 23.25 ± 10.30 | 15.70 ± 12.09 | 0.001 * |
| Characteristics | Score of ≥95th Percentile on DASS-S Scale N (%) | Score of <95th Percentile on DASS-S Scale N (%) | p-Value |
|---|---|---|---|
| Faculty | 0.003 | ||
| Faculty of physical education | 2 (6.3) | 30 (93.8) | |
| Natural and mathematical sciences faculty | 3 (6.4) | 44 (93.6) | |
| Faculty of technical sciences | 8 (20.5) | 31 (79.5) | |
| Teachers’ faculty | 4 (8.2) | 45 (91.8) | |
| Faculty of agriculture | 4 (7.7) | 48 (92.3) | |
| Faculty of economics | 5 (5.0) | 95 (95.0) | |
| Faculty of medicine | 35 (18.6) | 153 (81.4) | |
| Faculty of law | 8 (19.5) | 33 (80.5) | |
| Faculty of philosophy | 22 (20.2) | 87 (79.8) | |
| Type of residence | 0.454 | ||
| Urban | 41 (13.5) | 262 (86.5) | |
| Rural | 46 (15.7) | 247 (84.3) | |
| Sex | 0.001 * | ||
| Male | 14 (6.7) | 194 (93.3) | |
| Female | 77 (17.3) | 368 (82.7) | |
| Age in years X ± SD | 20.64 ± 1.68 | 21.70 ± 3.38 | 0.008 * |
| Relationship status | 0.165 | ||
| Single | 43 (12.1) | 311 (87.9) | |
| Married/In a relationship | 47 (15.9) | 248 (84.1) | |
| GPA X ± SD | 8.13 ± 0.83 | 7.99 ± 1.10 | 0.623 |
| Self-rated financial status | 0.001 * | ||
| Poor | 10 (43.5) | 13 (56.5) | |
| Average | 35 (13.8) | 218 (86.2) | |
| Good | 45 (12.1) | 326 (87.9) | |
| Family relationships | 0.001 | ||
| Poor | 4 (28.6) | 10 (71.4) | |
| Average | 19 (26.0) | 54 (74.0) | |
| Good | 67 (11.9) | 494 (88.1) | |
| Self-rated health | 0.001 * | ||
| Poor | 5 (38.5) | 8 (61.5) | |
| Average | 34 (34.0) | 66 (66.0) | |
| Good | 49 (9.4) | 471 (90.6) | |
| Tobacco smoking | 0.201 | ||
| Yes | 19 (17.8) | 88 (82.2) | |
| No | 72 (13.1) | 478 (86.9) | |
| Use of electronic cigarettes | 0.269 | ||
| Yes | 8 (19.0) | 34 (81.0) | |
| No | 86 (13.2) | 565 (86.8) | |
| Tobacco-heating products | 0.865 | ||
| Yes | 2 (15.4) | 11 (84.6) | |
| No | 87 (13.7) | 546 (86.3) | |
| Alcohol consumption | 0.803 | ||
| Yes | 60 (14.0) | 368 (86.0) | |
| No | 29 (13.3) | 189 (86.7) | |
| Binge drinking in the past month | 0.628 | ||
| Yes | 22 (15.7) | 118 (84.3) | |
| No | 63 (14.1) | 385 (85.9) | |
| Cannabis use | 0.001 | ||
| Yes | 10 (35.7) | 18 (64.3) | |
| No | 77 (12.7) | 529 (87.3) | |
| Use of anti-anxiety medications | 0.001 * | ||
| Yes | 29 (29.6) | 69 (70.4) | |
| No | 62 (11.1) | 497 (88.9) | |
| Mobile phone addiction | 0.001 | ||
| Yes | 37 (28.2) | 94 (71.8) | |
| No | 54 (10.3) | 472 (89.7) | |
| Time spent on social media per day X ± SD | 4.40 ± 2.52 | 3.91 ± 2.13 | 0.019 |
| Time spent playing video games X ± SD | 1.96 ± 5.93 | 1.15 ± 3.59 | 0.595 |
| BMI ± SD | 23.04 ± 3.23 | 22.72 ± 3.75 | 0.418 |
| Study engagement X ± SD | 34.28 ± 16.08 | 34.49 ± 10.06 | 0.024 |
| MET-minutes/week | 2582.00 ± 2006.49 | 2669.17 ± 2291.46 | 0.177 |
| Social support X ± SD | 5.84 ± 1.00 | 6.13 ± 0.83 | 0.033 |
| PIU score X ± SD | 45.40 ± 14.21 | 40.56 ± 13.01 | 0.001 |
| Impulsivity score X ± SD | 26.04 ± 10.30 | 15.59 ± 11.77 | 0.001 * |
| Characteristics | Score of ≥95th Percentile on DASS-D Scale OR (95% CI) | Score of ≥95th Percentile on DASS-A Scale OR (95% CI) | Score of ≥95th Percentile on DASS-S Scale OR (95% CI) |
|---|---|---|---|
| Type of residence | |||
| Urban | 1.0 ref.cat | / | / |
| Rural | 2.21 (1.05–4.66) | / | / |
| Sex | |||
| Male | / | 1.0 ref. cat | / |
| Female | / | 2.59 (1.29–5.24) | / |
| Age in years X ± SD | / | / | / |
| Self-rated financial status | |||
| Poor | / | / | 8.66 (2.52–29.72) |
| Average | / | / | 1.55 (0.81–2.99) |
| Good | / | / | 1.0 ref. cat |
| / | |||
| / | |||
| / | |||
| Self-rated health | |||
| Poor | 4.21 (0.69–25.62) | 0.35 (0.04–3.26) | 3.25 (0.57–18.53) |
| Average | 5.05 (2.35–10.83) | 4.35 (2.34–8.09) | 3.98 (2.03–7.81) |
| Good | 1.0 ref. cat | 1.0 ref. cat | 1.0 ref. cat |
| Tobacco-heating products | |||
| Yes | / | 5.63 (1.01–31.22) | / |
| No | / | 1.0 ref. cat | / |
| / | |||
| / | |||
| Use of anti-anxiety medications | |||
| Yes | 2.94 (1.31–6.61) | 3.17 (1.55–6.49) | 3.50 (1.64–7.48) |
| No | 1.0 ref. cat | 1.0 ref. cat | 1.0 ref. cat |
| Mobile phone addiction | |||
| Yes | 3.25 (1.55–6.81) | / | / |
| No | 1.0 ref. cat | / | / |
| Time spent on social media per day | / | / | 1.18 (1.05–1.34) |
| / | |||
| Social support | 0.68 (0.51–0.92) | 0.60 (0.45–0.80) | / |
| Impulsivity score | 1.03 (1.01–1.05) | 1.04 (1.02–1.06) | 1.04 (1.02–1.06) |
| Nagelkerke R square | 0.328 | 0.312 | 0.288 |
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Ilic, D.; Milosevic, J.; Todorovic, J.; Terzic-Supic, Z.; Dragojevic, I.; Stojanovic-Tasic, M.; Novakovic, E.; Spasojevic, T.; Memarovic, S.; Galjak, M.; et al. Depression, Anxiety and Stress Among Students at the University of Pristina-Kosovska Mitrovica, Kosovo and Metohija, Serbia. Healthcare 2026, 14, 958. https://doi.org/10.3390/healthcare14070958
Ilic D, Milosevic J, Todorovic J, Terzic-Supic Z, Dragojevic I, Stojanovic-Tasic M, Novakovic E, Spasojevic T, Memarovic S, Galjak M, et al. Depression, Anxiety and Stress Among Students at the University of Pristina-Kosovska Mitrovica, Kosovo and Metohija, Serbia. Healthcare. 2026; 14(7):958. https://doi.org/10.3390/healthcare14070958
Chicago/Turabian StyleIlic, Danijela, Jovana Milosevic, Jovana Todorovic, Zorica Terzic-Supic, Ilija Dragojevic, Mirjana Stojanovic-Tasic, Emilija Novakovic, Tijana Spasojevic, Svetozar Memarovic, Milivoje Galjak, and et al. 2026. "Depression, Anxiety and Stress Among Students at the University of Pristina-Kosovska Mitrovica, Kosovo and Metohija, Serbia" Healthcare 14, no. 7: 958. https://doi.org/10.3390/healthcare14070958
APA StyleIlic, D., Milosevic, J., Todorovic, J., Terzic-Supic, Z., Dragojevic, I., Stojanovic-Tasic, M., Novakovic, E., Spasojevic, T., Memarovic, S., Galjak, M., Rakic, K., Virijevic, M., Stevanovic, K., Stefanovic, J., Trajkovic, B., Milovic, A., & Mirkovic, M. (2026). Depression, Anxiety and Stress Among Students at the University of Pristina-Kosovska Mitrovica, Kosovo and Metohija, Serbia. Healthcare, 14(7), 958. https://doi.org/10.3390/healthcare14070958

