Perception of problem based learning versus conventional teaching methods by clinical medical students in Nigeria.

Perception of problem based learning versus conventional teaching methods by clinical medical students in Nigeria.

Okoye, Helen Chioma;Meka, Ijeoma Angela;Ugwu, Angela Ogechukwu;Yahaya, Isah Adagiri;Otokunefor, Ochuko;Ojo, Olugbenga Olalekan;Ugwu, Emmanuel Onyebuchi;
The Pan African medical journal 2019 Vol. 33 pp. 311
287
okoye2019perceptionthe

Abstract

Problem-based learning (PBL) method which was introduced about 50 years ago in Canada is beginning to gain acceptance over conventional teaching method (CTM) worldwide in medical education but still remains unpopular in Nigeria. This study aims to determine the perception of clinical medical students to the use of both learning methods in pathology courses.A cross-sectional quantitative survey was conducted in four Nigerian universities drawn from four regions of the country. Data were collected using pretested semi-structured self-administered questionnaires.The study included 310 respondents, 182(58.7%) males and 128(41.3%) females. Of all the participants, 257(82.9%) had heard of PBL prior to the study and 260(83.9%) thought it suitable for teaching and learning Pathology. Majority of participants, 221(71.3%) preferred a combination of both PBL and CTM while 238(76.8%) thought PBL suitable for all medical students. Some identified factors capable of enhancing adaptation of PBL into medical curriculum include conducive quiet spaces for learning and availability of computers with internet facilities for students' use.Participants demonstrated high level of awareness of PBL and thought it suitable for all medical students. Availability of computers and up-to-date libraries with internet and audio-visual facilities could enhance adaptation of PBL into medical curriculum in Nigeria.

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65058
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10.11604/pamj.2019.33.311.19169
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