Next Article in Journal
Molecular Identification of the Glutaredoxin 5 Gene That Plays Important Roles in Antioxidant Defense in Arma chinensis (Fallou)
Previous Article in Journal
Socket Array Irregularities and Wing Membrane Distortions at the Eyespot Foci of Butterfly Wings Suggest Mechanical Signals for Color Pattern Determination
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Spatio-Temporal Influence on the Distribution of Forensically Relevant Blowflies (Diptera: Calliphoridae) in Gyeongsangnam-do, South Korea

Department of Biomedical Sciences, Kosin University, Wachi-ro 194, Yeongdo-gu, Busan 49104, Republic of Korea
*
Author to whom correspondence should be addressed.
Insects 2024, 15(7), 536; https://doi.org/10.3390/insects15070536
Submission received: 25 June 2024 / Revised: 15 July 2024 / Accepted: 16 July 2024 / Published: 17 July 2024
(This article belongs to the Section Medical and Livestock Entomology)

Abstract

:

Simple Summary

Research into the community composition and succession of blowflies can provide valuable insights into the timing and environmental conditions of colonization events, enhancing the accuracy of forensic analyses. Blowfly species diversity and distribution are influenced by various environmental factors such as season, habitat, and geographical location, which in turn affect their behavior and colonization patterns. The researchers surveyed blowfly populations across four distinct regions over the course of a year, examining how factors like season, habitat, and location influenced the blowfly community. The findings showed significant seasonal variations, emphasizing the impact of environmental conditions on blowfly behavior and colonization patterns. This research provides important regional data on forensically relevant blowfly species, which can help improve the accuracy of estimating the time and circumstances of death during criminal investigations. By enhancing our understanding of blowfly ecology, this work also contributes to broader scientific knowledge about decomposition processes and the role of insects in ecosystem functioning, ultimately benefiting crime scene investigations and advancing the field of forensic science.

Abstract

The study of blowfly (Diptera: Calliphoridae) biodiversity and distribution is crucial for forensic investigations. Abiotic and biotic factors, such as season and habitat type, have a significant impact on blowfly populations. However, only a few forensic entomology studies have been conducted in South Korea, particularly in the Gyeongsangnam-do region. To address this, an extensive year-long survey was conducted to analyze the compositions, habitat preferences, distribution, and seasonal abundance of forensically relevant blowflies in urban and forested habitats of Gyeongsangnam-do, with sampling conducted twice a month using mouse carcass-baited traps set for 48 h each time. A total of 3470 adult blowflies were recorded, encompassing five genera and 13 species, with a noted absence of specimens during the winter months. The predominant species was Lucilia porphyrina, accounting for 37.2% of the total sample, followed by Chrysomya pinguis (27.6%), Lucilia sericata (7.6%), and Lucilia illustris (7.1%). The species composition was consistent across all surveyed regions; however, seasonal variation in species diversity was evident, with a peak in spring and a decline in summer. Notably, certain species exhibited clear preferences for either urban (Calliphora calliphoroides and L. sericata) or forested habitats (L. porphyrina and Ch. pinguis). This pioneering study elucidates the diverse blowfly communities in Gyeongsangnam-do, highlighting significant seasonal and habitat-dependent variations. These findings enrich our understanding of blowfly ecology in this region, offering valuable insights for forensic applications and underscoring the necessity for ongoing entomological surveillance and research.

1. Introduction

In medico-legal entomology, the duration of insect colonization on human or animal remains at a crime scene provides critical insights for accurately estimating the postmortem interval (PMI). When conditions facilitate insect access to a carcass, insects typically begin colonization during the initial stages of decomposition. This process allows for the precise estimation of the Time of Colonization (TOC) or the minimum Postmortem Interval (mPMI) [1,2]. Medico-legal entomologists estimate the mPMI by analyzing larval growth duration as an indicator of the time since death [3,4,5] or by examining the succession patterns of insects during different stages of decomposition [6,7]. Additionally, they strive to understand the decomposition process through changes in the weight and physical characteristics of the remains [8,9].
The blowfly (Diptera: Calliphoridae) plays a significant role as a primary decomposer of carcasses post-mortem, contributing to the ecological processes of decay [10,11,12,13]. Research into the community composition and succession of blowflies can provide valuable insights into the timing and environmental conditions of colonization events, enhancing the accuracy of forensic analyses [14,15]. Blowfly species diversity and distribution are influenced by various environmental factors such as temperature, habitat, and geographical location, which in turn affect their behavior and colonization patterns [16,17,18,19]. The behavior of blowflies, including their approach patterns to carcasses, is another critical aspect of medico-legal entomology. Seasonal variations and environmental conditions significantly influence these behaviors, affecting the timing and nature of colonization [20,21,22].
Localized studies have shown that regional variations significantly impact blowfly population dynamics, highlighting the importance of region-specific data in medico-legal entomology [15,23]. Detailed studies on the ecological and biological aspects of blowfly activity can provide supplementary evidence in forensic cases, offering insights into the circumstances surrounding the discovery of remains [24]. This is particularly relevant in regions like South Korea, where distinct seasonal and geographical factors can influence insect activity. While global databases like the Global Biodiversity Information Facility (GBIF) and the Korean Natural History Research Information System (NARIS) provide valuable biodiversity data, they often lack the regional and seasonal specificity needed for forensic applications [14,18]. Therefore, there is a pressing need for comprehensive, quantitative data on blowfly species diversity and distribution across well-defined regions and time frames to effectively support forensic investigations.
Globally, forensic research into the distribution and diversity of blowfly species is currently being conducted, with significant contributions from various countries, including the United States [15,19,23], Canada [25,26], Colombia [27], Argentina [28], Switzerland [29,30], Germany [17,31], Spain [32], and Japan [33]. Despite these extensive efforts, research focusing on the forensically significant blowfly species in South Korea remains sparse, with a notable lack of comprehensive regional coverage. Thus, detailed investigations into the blowfly populations across various South Korean regions are required. In this study, we aim to explore the spatio-temporal distribution of forensically relevant blowflies in Gyeongsangnam-do, South Korea. Given the known impact of environmental factors such as temperature, habitat, and geographical location on blowfly species distribution and diversity, this research posits the hypothesis that community composition, species abundance, and diversity will differ across different regions, seasons, and habitats.

2. Materials and Methods

2.1. Site Description

This study encompasses a comprehensive survey conducted over the span of one year within four distinct regions of Gyeongsangnam-do, South Korea: Busan, Changwon, Gimhae, and Tongyeong (Figure 1). Each region was selected based on its unique geographical characteristics, as delineated below:
Busan (BS): This region is characterized by its mountainous terrain, is bordered by the sea, and includes islands along the eastern and southern coasts, conferring a diverse ecosystem.
Changwon (CW): Distinguished by a mountainous valley landscape, Changwon offers a unique combination of natural topographical features.
Gimhae (GH): This region is notable for its proximity to the South Sea and several rivers, providing a distinctive aquatic and terrestrial interface.
Tongyeong (TY): Tongyeong is a peninsula known for its ria coast, and its landscape is marked by intricate coastlines and varied maritime habitats.
To investigate the difference in species composition and abundance of blowflies based on habitat types within the study regions, the trap deployment sites were classified into two types: urban and forest. Urban habitats were defined by densely populated areas featuring man-made structures, such as roadsides or residential areas. Conversely, the forest habitats were characterized by sparsely populated areas, typically located at the base of mountains or within wooded terrains, devoid of man-made structures. The precise location of each trap was documented using GPS coordinates to ensure accuracy in data collection. The spatial distribution of the selected regions ranged from a minimum distance of approximately 15.3 km to a maximum distance of approximately 64.4 km, highlighting the study’s geographical breadth.

2.2. Sampling Procedure

Bait traps, recognized for their efficacy in capturing the broad characteristics of seasonal and regional variations in blowfly populations, were employed as the primary collection method [34]. The survey was conducted twice a month in each region from May 2022 to May 2023. For each sampling event, a total of 10 bait traps were deployed: five in the urban habitats and five in the forest habitats. These traps were placed for a duration of 48 h, with an inter-trap distance of approximately 20–50 m, to ensure spatial independence [35]. New traps were used for each survey to prevent any residual attractant effects. Thus, a total of 960 traps were deployed over the study period.
The design of the bait trap consisted of a conical structure equipped with a hook at the apex, suspended 1.5–2 m above ground level (Figure 2). This elevation strategy was adopted to restrict access to ants and other non-target ground insects [34]. As an attractant, thawed fresh small mouse carcasses weighing between 20 and 30 g were employed. These carcasses were brought in vacuum packed at room temperature before being used in the traps.
Given the observed decrease in fly activity during periods of rainfall [11,17,24], efforts were made to schedule trap deployment during dry periods to avoid dilution of the attractant’s scent by rainwater, which may impede blowfly attraction. Upon collection, the blowflies were euthanized using a pyrethroid insecticide and preserved in 70% ethanol for subsequent analysis. Morphological identification of all adult specimens at the species level was conducted using the taxonomic keys provided by Ji [36] and Kanō and Shinonaga [37]. The specimens are preserved in the entomological collection at the Department of Biomedical Sciences, Kosin University, for future reference and study.

2.3. Data Analysis

Blowfly community analysis was segmented by region, season, and habitat, with seasonal divisions according to the climatic patterns of Gyeongsangnam-do, South Korea, as delineated by the official weather website for spring (March to May), summer (June to August), autumn (September to November), and winter (December to February) (Figure 3) [38]. To elucidate the diversity of blowfly species in each season and region, metrics relative abundance, species diversity determined via the Shannon–Wiener index (H’), and species richness calculated through the Margalef index (R) were computed.
To reveal differences in temperature across regions and seasons, a one-way analysis of variance (ANOVA) was performed, followed by a Tukey’s HSD test as a post-hoc test. The average daily temperature was obtained from the Korea Meteorological Administration and was calculated from weather stations up to 10 km from the survey site.
One-way ANOVA was employed to identify regional and seasonal disparities in species diversity and richness. Statistically significant differences were analyzed using post-hoc analysis with Tukey’s HSD test. Furthermore, the Kruskal–Wallis test was utilized to evaluate differences in relative abundance across seasons for the nine species that constituted more than 1% of the total community captured using the traps. Subsequent to significant Kruskal–Wallis test results, the Bonferroni correction was used to adjust the p-values obtained from Dunn’s test. Winter was excluded from the statistical analysis due to the zero variance of the data.
The temporal dynamics of species abundance were visualized through a heatmap generated via two-way hierarchical clustering analysis, employing the unweighted pair group method with arithmetic mean (UPGMA) algorithm and Bray–Curtis similarity. Each month throughout the survey period was plotted along the X-axis, while the nine predominant blowfly species were presented along the Y-axis.
Species diversity in different habitats was assessed using the Shannon–Wiener index (H’) and Margalef index (R), employing the same procedures as previously mentioned. Habitat preferences of the dominant species, representing more than 1% of the total community, were examined using a chi-square test of the trap data acquired throughout the study. To provide a more comprehensive view of the distribution patterns of blowflies, the relative abundances of environmental parameters (region and season, habitat) were analyzed using principal component analysis (PCA).
For all statistical tests, the Shapiro–Wilk test was applied to assess data normality, and a p-value threshold of <0.05 was considered significant. Data analysis was performed in SPSS (version 23.0) [39] and Python (version 3.12.0) along with the pandas (version 2.1.3), numpy (version 1.26.1), scipy (version 1.11.3), matplotlib (version 3.8.1), and seaborn (version 0.13.0) libraries.

3. Results

3.1. Seasonal and Regional Variations in Blowfly Abundances and Diversity

Throughout the investigation period, a total of 3470 adult blowflies, encompassing 13 species across five genera, were collected (Table 1). Notably, no specimens were gathered during the winter season. Lucilia porphyrina emerged as the most prevalent species, with 1291 individuals accounting for 37.2% of the total collection, followed by Chrysomya pinguis (956 individuals representing 27.6%), Lucilia sericata (263 individuals, 7.6%), and Lucilia illustris (247 individuals, 7.1%).

3.1.1. Analysis of Temperature Differences

The analysis of temperature differences between regions and seasons showed that there was no significant difference in the mean temperature between regions (F = 0.390, df = 3, p = 0.760), but there was a significant difference in the mean temperature between seasons (F = 1763.709, df = 3, p < 0.001). Furthermore, post-hoc analysis revealed that the mean temperature significantly differed between all pairs of seasons (p < 0.001) (Figure 4).

3.1.2. Analysis of Blowfly Species Relative Abundance

Analysis of the relative abundance of blowfly species across different regions and seasons revealed significant seasonal variations in species distribution (Figure 5). In the spring, Calliphora nigribarbis and L. porphyrina exhibited the highest abundance in Gimhae, constituting 22.1% of all blowflies, whereas only L. porphyrina was predominantly abundant in Busan, Changwon, and Tongyeong, with proportions of 43.7%, 37.4%, and 37.4%, respectively. During the summer months, Ch. pinguis exhibited the highest abundance in Gimhae and Changwon at 80.0% and 41.5%, respectively, while L. porphyrina was most prevalent in Busan and Tongyeong, accounting for 79.1% and 56.8%, respectively. In autumn, Calliphora calliphoroides was notably abundant in Gimhae, Changwon, and Tongyeong at 39.8%, 39.0%, and 34.6%, respectively, with L. porphyrina maintaining the highest abundance in Busan at 56.5%.

3.1.3. Analysis of Species Diversity

Although statistical analysis of species diversity indicated no significant differences between regions (F = 1.142, df = 3, p = 0.389), a notable variation between seasons (F = 4.817, df = 2, p = 0.038) was observed (Figure 6). Species diversity peaked in spring and was lowest in summer. Species diversity in autumn did not significantly differ from that in spring (p = 0.398) or summer (p = 0.246); however, there was a significant disparity in species diversity between spring and summer (p = 0.031). Species richness showed no significant variation among regions (F = 1.749, df = 3, p = 0.234) or seasons (F = 0.873, df = 2, p = 0.450).

3.2. Seasonal Differences in Blowfly Abundance

The Kruskal–Wallis test was applied to examine the seasonal relative abundances of the nine predominant captured blowfly species that constituted more than 1% of the total community (Table 2). The results indicated significant seasonal variations in the abundances of four species. The abundance of C. calliphoroides, Calliphora grahami, and Ch. pinguis exhibited significant seasonal differences between summer and autumn (p = 0.004, p = 0.043 and p = 0.013, respectively). The abundances of C. nigribarbis displayed notable seasonal differences between spring and summer (p = 0.042).
Two-way hierarchical clustering and heatmap analyses of the community composition of blowflies revealed distinct monthly correlations among the nine species (Figure 7). At the genus level, the clustering resulted in a discernible separation into three groups: one comprising four Calliphora species, one Chrysomya, and four Lucilia. Monthly clustering identified that March, April, October, and November, typically the early spring and late autumn months, formed distinct subgroups, while species in May through September clustered into another subgroup, indicating seasonal influences on community composition.

3.3. Habitat Preferences and Environmental Influences on Blowfly Species Distribution

The investigation into species diversity and richness across different habitats revealed that, in urban habitats, species diversity was 2.895 (H′), but was 2.019 (H′) in forest habitats, indicating a higher diversity in urban environments. Conversely, species richness presented similar values between habitats (1.153 (R) in urban habitats and 1.027 (R) in forest settings). These results suggest a distinction in habitat suitability for various blowfly species.
Further analysis identified specific habitat preferences among the blowfly species (Table 3). Five species demonstrated a preference towards urban habitats, with C. calliphoroides and L. sericata showing a significantly higher preference than that of other species (p < 0.001). Additionally, Calliphora vicina favored urban settings, albeit without statistical significance. Conversely, three species exhibited a preference for forest habitats, with L. porphyrina and Ch. pinguis displaying a marked inclination towards these environments (p < 0.001). Calliphora nigribarbis did not exhibit a clear preference for either habitat type.
The distribution of blowflies is clearly reflected in the PCA, which is related to environmental influences such as season and habitat (Figure 8). The PCA (PC1 and PC2 accounting for 77.1% of the variation) showed that spring and autumn contrasted clearly with summer. Species belonging to the genus Calliphora were found to be associated with spring and autumn, while Ch. pinguis, Lucilia caesar, and L. illustris were generally associated with summer. The vectors for Gimhae and Tongyeong were found to have no significant explanatory power compared to the other vectors.

4. Discussion

This research presents the first comprehensive analysis of blowfly communities within the Gyeongsangnam-do region. This study successfully identified 14 distinct blowfly species, with L. porphyrina (37.2%), Ch. pinguis (27.6%), L. sericata (7.6%), and L. illustris (7.1%) emerging as the predominant species. Notably, the composition of the blowfly community did not exhibit significant variations between different sites within the region. However, seasonal distinctions were apparent, with community composition differing between every season apart from winter. This seasonal variation in community composition underscores the influence of climatic factors on blowfly activity and diversity. Upon analyzing climatic factors, we found no significant differences in the annual average daily temperatures among the four study regions. This suggests that the cause affecting the distribution of blowflies in the region is not the difference in daily average temperature. However, significant differences in average temperature between seasons were confirmed. This supports the findings of this study that the seasonal division of the four regions was appropriately differentiated according to daily average temperature and that the distribution of blowflies is more influenced by seasonal factors governing different environmental conditions.
We analyzed the distribution of blowflies by considering both species diversity and species richness to better understand their response to ecological and environmental changes in the study area. In all regions, species diversity decreased during the summer, which may be due to the dominance of L. porphyrina and Ch. pinguis, which accounted for a significant proportion of the total individuals collected during this period. Such a high prevalence of these two species in the summer suggests they have a possible competitive advantage or preference for the environmental conditions present during this season.

4.1. Ecological Niches and Seasonal Distribution of Forensic Blowflies

Our findings reveal a distinct season-dependent prevalence of the genus Calliphora, which was more abundant in spring and autumn than in summer. Specifically, C. calliphoroides (also known as Triceratopyga calliphoroides) was absent during summer and winter, and its highest relative abundance occurred in autumn. This pattern underscores its pronounced seasonal preference. The genus Calliphora is typically found colonizing remains in significant numbers during the cool seasons, such as autumn, winter, and spring, with the exact timing varying by geographic location [16,19,26,40]. In Korea, Calliphora species have been frequently observed on carcasses in spring and autumn [7]. Forensic autopsy data obtained in Korea corroborated our findings, with species such as C. calliphoroides, C. grahami, C. nigribarbis, and C. vicina predominantly identified in these seasons [41], highlighting their forensic significance in determining the mPMI.
The genus Lucilia was present in spring, summer, and autumn, with the most abundant during the summer. Lucilia porphyrina, the dominant species throughout Gyeongsangnam-do, exhibited limited abundance in metropolitan autopsies [41]. Notably, L. porphyrina thrives in Southeast Asia and tropical and subtropical mountainous regions with higher altitudes [42], suggesting that geographical and latitudinal differences may influence its distribution. Other Lucilia species mirrored the seasonal pattern of L. porphyrina, with L. sericata being particularly prevalent in domestic autopsies, underscoring its forensic importance in these cases [41].
Within the genus Chrysomya, both Ch. pinguis and Ch. megacephala were collected, but their abundances varied significantly. Chrysomya pinguis emerged as the second most abundant species, exhibiting a strong association with summer. Although Ch. megacephala is globally recognized as forensically significant [43], it constituted only 0.4% of the total population in this study. Chrysomya pinguis has a notable presence across various Asian countries [44,45,46] and is a key forensic species in Korea that is frequently found on carcasses and in autopsies across spring, summer, and autumn [6,7,41,47], which is further supported by its high abundance in this study. The differential abundances of Ch. pinguis and Ch. megacephala may result from ecological niche differentiation, with potential interspecific competition for limited resources [37,46,48]. This competition might lead to Ch. megacephala being ecologically displaced by Ch. pinguis. Alternatively, Yang and Shiao [46] proposed that temperature differentiation might influence the ecological niches of these species, but our study did not obtain constant abundance data to fully elucidate seasonal distribution differences only for those species.

4.2. Ecological Niches and Habitat Preferences of Forensic Blowflies

In this study, species within the Calliphora genus exhibited a general preference for urban habitats. Calliphora calliphoroides and C. grahami demonstrated a clear bias toward urban environments, while C. vicina was more frequently found in urban habitats, albeit without statistical significance. Despite C. vicina’s known association with urban habitats, regional and environmental variations may influence its lifecycle dynamics [49,50,51]. Altitude has been documented to affect blowflies’ seasonal distribution and oviposition behavior [33,52]. Although no significant habitat preference was noted for C. nigribarbis in this study, previous research indicates its tendency to migrate to higher altitudes during summer for breeding, returning to lower altitudes in autumn [33,53]. In addition, Kimura [54] discussed the migration patterns of C. nigribarbis and C. grahami in the context of univoltine life cycles, distinguishing between upward and downward migration, emphasizing the possibility of diapause-associated migration of low-altitude individuals. In particular, only some of the high-altitude individuals were moving at low altitudes; therefore, whether this migration can be classified as dispersion remains controversial. The similarities between migration and dispersion complicate identifying a clear definition, underscoring the need for further research on these species’ elevation-based life cycles and migration behaviors.
The Lucilia genus displayed varied habitat preferences among species. Lucilia caesar and L. porphyrina showed a predilection for forested habitats, while L. sericata and L. illustris favored urban settings. Lucilia porphyrina’s migration from the highlands to the lowlands for hibernation, followed by returning to the highlands for oviposition in summer [42], may explain its forest-biased habitat preference, as its lifecycle is predominantly spent in woodlands during summer. Here, L. sericata exhibited a strong preference for urban habitats and is known as an urban species with human affinities; it has been found in many autopsies in domestic indoor spaces [41,49,55,56]. Lucilia caesar and L. illustris are known to be morphologically similar sister species [57,58]; the habitat distribution in this study showed conflicting results. Lucilia caesar is generally known to be abundant in shady and sparsely populated forested habitats, where its ecology is influenced by low temperature and high humidity factors [59,60,61]. These habitat differences may be related to niche partitioning. As carcasses are a limited and transient resource, carrion ecosystems are characterized by intense resource competition [61,62]. Therefore, it is possible that the two species have diverged to adapt to different habitats to minimize direct competition.
Chrysomya pinguis exhibited a preference for forested habitats, aligning with observations of its prevalence on corpses in less densely populated regions [56] and its abundance in mountainous areas during summer [53]. This species likely dominates high-land or forest habitats in summer, with potential spring and autumn migrations to low-land areas, possibly related to the diapause-associated migration behaviors described for C. nigribarbis and C. grahami [54,63].

4.3. Ecological Insights and Forensic Dynamics of Blowflies

This year-long investigation in Gyeongsangnam-do, South Korea, yielded fundamental forensic entomological data, laying the groundwork for enhancing forensic case studies in this region. The species cataloged in this research have been observed in both domestic animal carcasses and human autopsies, affirming their forensic relevance within South Korea [6,7,41]. The local blowfly data obtained by this study underscores the necessity for a comprehensive nationwide blowfly distribution dataset for refining forensic insect estimation techniques in future investigations.
This study was limited to blowfly colonization during the early stages of carcass decomposition because the bait used to replace the odor of the decomposing carcass was only allowed to colonize for two days after the onset of decomposition. Despite this limitation, our findings support the hypothesis that different blowfly species exhibit distinct habitat preferences, as well as specific seasonal and geographical distribution patterns. These observed patterns are instrumental for forensic entomologists to determine the geographical origin of insects found on a corpse, assess potential corpse movement, and deduce the location of the crime. Understanding the ecological niches and behavior of blowfly species can significantly enhance the utility of forensic entomology in criminal investigations. By recognizing species-specific habitat preferences and their seasonal and geographical distribution, forensic entomologists can draw inferences about the environmental conditions surrounding a crime scene [50]. This information can help identify the likely locations where a body may have been moved from or to, providing critical evidence in crime scene reconstruction [18].
It is important to recognize that using mouse cadavers cannot perfectly replicate the condition of human remains. The differences between small mammals, which are typically hairy, and the larger human body, which has less body hair and is often clothed, complicate direct comparisons of research results to actual forensic cases. Nevertheless, insects collected from experiments using animal carcasses have also been found during human autopsies [6,7,8,9,22,41]. Utilizing animal carcasses for research allows for stringent control of experimental conditions and the repetition of experiments with fewer ethical and legal constraints. Therefore, studies involving animal carcasses can sufficiently support the findings obtained from human cadaver studies.
The data from this study also highlight the importance of localized research in building a robust forensic framework. The specific blowfly species identified, as well as their patterns of colonization, offer valuable insights into regional biodiversity and ecological dynamics. Detailed regional studies are crucial for developing accurate forensic models that can be applied to various scenarios, ultimately improving the precision of forensic analyses. Beyond immediate forensic applications, the ecological information gained from this study contributes to a broader understanding of blowfly ecology and their role in the decomposition process. The observed habitat preferences and distribution patterns can inform future studies on blowfly behavior and their interactions with the environment, which is vital for both forensic science and ecological research.

5. Conclusions

This investigation provides essential data on the spatio-temporal distribution of blowfly species in Gyeongsangnam-do, South Korea, emphasizing the need for comprehensive regional datasets. The findings highlight the significance of species diversity, habitat preferences, and ecological niches in forensic entomology, offering valuable insights for crime scene investigations and advancing the field’s scientific foundation. Future research should focus on expanding the dataset to include various stages of decomposition and different environmental conditions to further refine forensic entomological methods and applications.

Author Contributions

H.-S.O. Methodology, Validation, Investigation, Formal analysis, Writing—Original Draft, Writing—Review and Editing, Visualization. I.-S.B. Methodology, Validation, Investigation. M.-G.K. Methodology, Investigation. S.-H.P. Conceptualization, Methodology, Validation, Writing—Reviewing and Editing, Supervision, Funding acquisition. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by the Projects for Research and Development of Police Science and Technology under the Center for Research and Development of Police Science and Technology of the Korean National Police Agency (grant no. PR10-04-000-22).

Data Availability Statement

The original contributions presented in the study are included in the article; further inquiries can be directed to the corresponding authors.

Acknowledgments

We would like to thank Yi-Re Kim, who helped with the field research for this paper, and Jae-Bong Jung for his comments on the paper’s methodology.

Conflicts of Interest

The authors declare no conflicts of interest.

References

  1. Catts, E.P.; Goff, M.L. Forensic entomology in criminal investigations. Annu. Rev. Entomol. 1992, 37, 253–272. [Google Scholar] [CrossRef] [PubMed]
  2. Tomberlin, J.K.; Benbow, M.E.; Tarone, A.M.; Mohr, R.M. Basic research in evolution and ecology enhances forensics. Trends Ecol. Evol. 2011, 26, 53–55. [Google Scholar] [CrossRef]
  3. Jung, J.B.; Park, H.D.; Yoon, M.H. Estimating Postmortem Interval of Human Cadavers Based on The Rearing Data of Maggots. Korean J. Sci. Crim. Investig. 2014, 8, 157–163. [Google Scholar]
  4. Park, J.E.; Shin, S.E.; Park, S.H.; Jeong, S.J.; Park, S.H.; Moon, T.Y.; Lee, J.W. A Study for Estimating Growth Time of Calliphoridae Flies Using Statistical Models. J. Sci. Crim. Investig. 2019, 13, 89–94. [Google Scholar] [CrossRef]
  5. Shin, S.E.; Park, J.H.; Jeong, S.J.; Park, S.H. The growth model of forensically important Lucilia sericata (Meigen) (Diptera: Calliphoridae) in South Korea. Insects 2021, 12, 323. [Google Scholar] [CrossRef]
  6. Park, S.H.; Moon, T.Y. Consistency of seasonal patterns of insect succession on pig cadavers at Yeongdo Island in Busan, Korea. Entomol. Res. 2021, 51, 24–35. [Google Scholar] [CrossRef]
  7. Park, S.H.; Lee, J.H.; Woo, D.H.; Ji, B.H.; Moon, T.Y. Insect diversity and succession patterns on pig cadavers in Changwon, South Korea. Entomol. Res. 2022, 52, 241–250. [Google Scholar] [CrossRef]
  8. Oh, H.S.; Baek, I.S.; Kim, N.Y.; Park, S.H. Influence of carcass mass on decomposition rate: A medico-legal entomology perspective. Entomol. Res. 2024, 54, e12705. [Google Scholar] [CrossRef]
  9. Park, S.H.; Baek, S.H.; Moon, T.Y. The impact of blowflies on pig cadaver decomposition on Yeongdo Island, Busan, South Korea. Entomol. Res. 2021, 51, 578–584. [Google Scholar] [CrossRef]
  10. Campobasso, C.P.; Di Vella, G.; Introna, F. Factors affecting decomposition and Diptera colonization. Forensic Sci. Int. 2001, 120, 18–27. [Google Scholar] [CrossRef]
  11. Mann, R.W.; Bass, W.M.; Meadows, L. Time since death and decomposition of the human body: Variables and observations in case and experimental field studies. J. Forensic Sci. 1990, 35, 103–111. [Google Scholar] [CrossRef] [PubMed]
  12. Goff, M.L. Estimation of postmortem interval using arthropod development and successional patterns. Forensic Sci. Rev. 1993, 5, 81. [Google Scholar] [PubMed]
  13. Amendt, J.; Krettek, R.; Zehner, R. Forensic entomology. Naturwissenschaften 2004, 91, 51–65. [Google Scholar] [CrossRef] [PubMed]
  14. Tomberlin, J.K.; Mohr, R.; Benbow, M.E.; Tarone, A.M.; Vanlaerhoven, S. A roadmap for bridging basic and applied research in forensic entomology. Annu. Rev. Entomol. 2011, 56, 401–421. [Google Scholar] [CrossRef] [PubMed]
  15. Pinto, J.; Magni, P.A.; O’Brien, R.C.; Dadour, I.R. Forensically relevant blow flies (Diptera: Calliphoridae) of Central Connecticut, USA. Forensic Sci. Int. 2021, 327, 110940. [Google Scholar] [CrossRef] [PubMed]
  16. George, K.A.; Archer, M.S.; Toop, T. Abiotic environmental factors influencing blowfly colonisation patterns in the field. Forensic Sci. Int. 2013, 229, 100–107. [Google Scholar] [CrossRef] [PubMed]
  17. Lutz, L.; Verhoff, M.A.; Amendt, J. Environmental factors influencing flight activity of forensically important female blow flies in Central Europe. Int. J. Leg. Med. 2019, 133, 1267–1278. [Google Scholar] [CrossRef] [PubMed]
  18. Moon, T.Y.; Moon, G.J. Medicolegal Entomology. Kosin J. Health Sci. 1997, 7, 33–52. [Google Scholar]
  19. Weidner, L.M.; Jennings, D.E.; Tomberlin, J.K.; Hamilton, G.C. Seasonal and geographic variation in biodiversity of forensically important blow flies (Diptera: Calliphoridae) in New Jersey, USA. J. Med. Entomol. 2015, 52, 937–946. [Google Scholar] [CrossRef]
  20. Mohr, R.M.; Tomberlin, J.K. Environmental factors affecting early carcass attendance by four species of blow flies (Diptera: Calliphoridae) in Texas. J. Med. Entomol. 2014, 51, 702–708. [Google Scholar] [CrossRef]
  21. Jo, T.H. Seasonal Prevalence and Altitudinal Distribution of the Flies in Mt. Hallasan, Jejudo Island, Korea. J. Environ. Sci. 2010, 19, 491–507. [Google Scholar]
  22. Jung, J.B.; Yoon, M.H. A Forensic Entomological Study Using Pig Carrions in Different Seasons and the Exposed Extent. Korean Police Stud. Rev. 2013, 12, 335–354. [Google Scholar]
  23. Brundage, A.; Bros, S.; Honda, J.Y. Seasonal and habitat abundance and distribution of some forensically important blow flies (Diptera: Calliphoridae) in Central California. Forensic Sci. Int. 2011, 212, 115–120. [Google Scholar] [CrossRef] [PubMed]
  24. Moon, T.Y. Cadaver Entomofauna as Forensic Indicators. Korean J. Leg. Med. 1994, 18, 33–40. [Google Scholar]
  25. Langer, S.V.; Kyle, C.J.; Illes, M.; Larkin, S.; Beresford, D.V. Urban and rural spatial delineations in blow fly species (Diptera: Calliphoridae) across Canada: Implications for forensic entomology. J. Med. Entomol. 2019, 56, 927–935. [Google Scholar] [CrossRef]
  26. Smith, C.A.; Poirier, L.M.; Anderson, G.S. The effect of season and urbanisation on Calliphoridae (Diptera) diversity in British Columbia, Canada, using baited traps. Can. Entomol. 2023, 155, e24. [Google Scholar] [CrossRef]
  27. Alvarez Garcia, D.M.; Pérez-Hérazo, A.; Amat, E. Spatial and temporal variation of the Blowflies Community (Diptera: Calliphoridae) from an urban area in Northern South America. J. Med. Entomol. 2019, 56, 464–471. [Google Scholar] [CrossRef]
  28. Dufek, M.I.; Oscherov, E.B.; Damborsky, M.P.; Mulieri, P.R. Calliphoridae (Diptera) in human-transformed and wild habitats: Diversity and seasonal fluctuations in the Humid Chaco Ecoregion of South America. J. Med. Entomol. 2019, 56, 725–736. [Google Scholar] [CrossRef] [PubMed]
  29. Feddern, N.; Amendt, J.; Schyma, C.; Jackowski, C.; Tschui, J. A preliminary study about the spatiotemporal distribution of forensically important blow flies (Diptera: Calliphoridae) in the area of Bern, Switzerland. Forensic Sci. Int. 2018, 289, 57–66. [Google Scholar] [CrossRef]
  30. Hodecek, J.; Jakubec, P. Spatio-temporal distribution and habitat preference of necrophagous Calliphoridae based on 160 real cases from Switzerland. Int. J. Leg. Med. 2022, 136, 923–934. [Google Scholar] [CrossRef]
  31. Fremdt, H.; Amendt, J. Species composition of forensically important blow flies (Diptera: Calliphoridae) and flesh flies (Diptera: Sarcophagidae) through space and time. Forensic Sci. Int. 2014, 236, 1–9. [Google Scholar] [CrossRef] [PubMed]
  32. Martín-Vega, D.; Baz, A. Sarcosaprophagous Diptera assemblages in natural habitats in central Spain: Spatial and seasonal changes in composition. Med. Vet. Entomol. 2013, 27, 64–76. [Google Scholar] [CrossRef] [PubMed]
  33. Iwasa, M.; Matsushima, K.; Inoue, A. Seasonal and spatial distributions in relation to reproduction of blowflies (Diptera, Calliphoridae) in Hokkaido, Japan. Med. Entomol. Zool. 2012, 63, 1–10. [Google Scholar] [CrossRef]
  34. Norris, K.R. The bionomics of blow flies. Annu. Rev. Entomol. 1965, 10, 47–68. [Google Scholar] [CrossRef]
  35. Steinke, D.; Braukmann, T.W.; Manerus, L.; Woodhouse, A.; Elbrecht, V. Effects of Malaise trap spacing on species richness and composition of terrestrial arthropod bulk samples. Metabarcoding Metagenomics 2021, 5, e59201. [Google Scholar] [CrossRef]
  36. Ji, B.H. Diagnostic Taxonomy and Forensic Implication of Necrophagous Flies Associated with Dead Animal. Master’s Dissertation, Kosin University, Busan, Republic of Korea, 2023. [Google Scholar]
  37. Kanō, R.; Shinonaga, S. Fauna Japonica: Calliphoridae (Insecta: Diptera); Biogeographical Society of Japan and National Science Museum: Tokyo, Japan, 1968. [Google Scholar]
  38. Korea Meteorological Administration: Climate Characteristics by Region in Korea. Available online: www.weather.go.kr (accessed on 13 May 2024).
  39. IBM SPSS Inc. SPSS Statistics for Windows; IBM Corp.: Armonk, NY, USA, 2016. [Google Scholar]
  40. Matoba, K.; Terazawa, K. Estimation of the time of death of decomposed or skeletonized bodies found outdoors in cold season in Sapporo city, located in the northern district of Japan. Leg. Med. 2008, 10, 78–82. [Google Scholar] [CrossRef] [PubMed]
  41. Shin, S.E. Taxonomic and Ecological Study on Necrophagous Insects and Its Forensic Application. Doctoral Dissertation, Kangwon National University, Chuncheon, Republic of Korea, 2019. [Google Scholar]
  42. Suenaga, O.; Kurahashi, H. Life cycle of an Oriental blow fly, Lucilia porphyrina (Walker) in Nagasaki, Western Japan. Trop. Med. 1995, 37, 99–107. [Google Scholar]
  43. Sukontason, K.; Piangjai, S.; Siriwattanarungsee, S.; Sukontason, K.L. Morphology and developmental rate of blowflies Chrysomya megacephala and Chrysomya rufifacies in Thailand: Application in forensic entomology. Parasitol. Res. 2008, 102, 1207–1216. [Google Scholar] [CrossRef] [PubMed]
  44. Klong-Klaew, T.; Ngoen-Klan, R.; Moophayak, K.; Sukontason, K.; Irvine, K.N.; Tomberlin, J.K.; Somboon, P.; Chareonviriyaphap, T.; Kurahashi, H.; Sukontason, K.L. Predicting geographic distribution of forensically significant blow flies of subfamily Chrysomyinae (Diptera: Calliphoridae) in Northern Thailand. Insects 2018, 9, 106. [Google Scholar] [CrossRef]
  45. Wells, J.D.; Singh, M.M.; Suzuki, K.; Miura, M.; Kurahashi, H. Male eye dimorphism and synanthropy in Chrysomya pinguis (Walker): Diptera: Calliphoridae. Med. Entomol. Zool. 1994, 45, 299–302. [Google Scholar] [CrossRef]
  46. Yang, S.T.; Shiao, S.F. Temperature adaptation in Chrysomya megacephala and Chrysomya pinguis, two blow fly species of forensic significance. Entomol. Exp. Et Appl. 2014, 152, 100–107. [Google Scholar] [CrossRef]
  47. Shin, S.E.; Jang, M.S.; Park, J.H.; Park, S.H. A forensic entomology case estimating the minimum postmortem interval using the distribution of fly pupae in fallow ground and maggots with freezing injury. Korean J. Lab. Med. 2015, 39, 17–21. [Google Scholar] [CrossRef]
  48. Harvey, M.L.; Gaudieri, S.; Villet, M.H.; Dadour, I.R. A global study of forensically significant calliphorids: Implications for identification. Forensic Sci. Int. 2008, 177, 66–76. [Google Scholar] [CrossRef]
  49. Anderson, G.S. The use of insects in death investigations: An analysis of cases in British Columbia over a five year period. Can. Soc. Forensic Sci. J. 1995, 28, 277–292. [Google Scholar] [CrossRef]
  50. Boudreau, D.R.; Hammami, N.; Moreau, G. Environmental and evolutionary factors favouring the coexistence of sarcosaprophagous Calliphoridae species competing for animal necromass. Ecol. Entomol. 2021, 46, 1293–1300. [Google Scholar] [CrossRef]
  51. Reiter, C. Zum wachstumsverhalten der maden der blauen schmeißfliege Calliphora vicina. Z. Für Rechtsmed. 1984, 91, 295–308. [Google Scholar] [CrossRef] [PubMed]
  52. Kurahashi, H.; Kawai, S.; Shudo, C.; Wada, Y. The life history of Calliphora nigribarbis Vollenhoven in Mt. Hachijo-Fuji, Hachijo Island. Jpn. J. Sanit. Zool. 1994, 45, 327. [Google Scholar] [CrossRef]
  53. Shinonaga, S. The altitudinal distribution of flies on Mt. Fuji in summer season. Med. Entomol. Zool. 1965, 16, 263–269. [Google Scholar] [CrossRef]
  54. Kimura, M.T. Altitudinal migration of insects. Entomol. Sci. 2021, 24, 35–47. [Google Scholar] [CrossRef]
  55. TACHIBANA, S.I.; Numata, H. Seasonal prevalence of blowflies and flesh flies in Osaka City. Entomol. Sci. 2006, 9, 341–345. [Google Scholar] [CrossRef]
  56. Toukairin, Y.; Arai, T.; Hoshi, T.; Trejo, J.A.O.; Nogami, M. The geographical distribution of fly larvae on corpses in Saitama Prefecture in Japan during the summer season. Leg. Med. 2017, 24, 75–77. [Google Scholar] [CrossRef]
  57. Boehme, P.; Amendt, J.; Zehner, R. The use of COI barcodes for molecular identification of forensically important fly species in Germany. Parasitol. Res. 2012, 110, 2325–2332. [Google Scholar] [CrossRef]
  58. Sonet, G.; Jordaens, K.; Braet, Y.; Desmyter, S. Why is the molecular identification of the forensically important blowfly species Lucilia caesar and L. illustris (family Calliphoridae) so problematic? Forensic Sci. Int. 2012, 223, 153–159. [Google Scholar] [CrossRef]
  59. Morris, O.S.; Titchener, R.N. Blowfly species composition in sheep myiasis in Scotland. Med. Vet. Entomol. 1997, 11, 253–256. [Google Scholar] [CrossRef] [PubMed]
  60. Hwang, C.; Turner, B.D. Spatial and temporal variability of necrophagous Diptera from urban to rural areas. Med. Vet. Entomol. 2005, 19, 379–391. [Google Scholar] [CrossRef] [PubMed]
  61. Arias-Robledo, G.; Stevens, J.R.; Wall, R. Spatial and temporal habitat partitioning by calliphorid blowflies. Med. Vet. Entomol. 2019, 33, 228–237. [Google Scholar] [CrossRef] [PubMed]
  62. Cruickshank, I.; Wall, R. Population dynamics of the sheep blowfly Lucilia sericata: Seasonal patterns and implications for control. J. Appl. Ecol. 2002, 39, 493–501. [Google Scholar] [CrossRef]
  63. Sukontason, K.L.; Sanit, S.; Limsopatham, K.; Wannasan, A.; Somboon, P.; Sukontason, K. Chrysomya pinguis (Walker) (Diptera: Calliphoridae), blow fly of forensic importance: A review of bionomics and forensic entomology appraisal. Acta Trop. 2022, 232, 106506. [Google Scholar] [CrossRef]
Figure 1. Location of sampling sites by region in Gyeongsangnam-do, South Korea. Black circles represent zones containing all sampling sites for urban and forest habitats within each region.
Figure 1. Location of sampling sites by region in Gyeongsangnam-do, South Korea. Black circles represent zones containing all sampling sites for urban and forest habitats within each region.
Insects 15 00536 g001
Figure 2. Conical bait trap used in the experiment.
Figure 2. Conical bait trap used in the experiment.
Insects 15 00536 g002
Figure 3. Average daily temperature in the region where traps were installed during the survey period from 2022 to 2023. Plots show the maximum and minimum temperatures for each region.
Figure 3. Average daily temperature in the region where traps were installed during the survey period from 2022 to 2023. Plots show the maximum and minimum temperatures for each region.
Insects 15 00536 g003
Figure 4. Box plots showing differences in average temperature by region and season (p-value for regional differences: 0.760, p-value for seasonal differences: <0.001).
Figure 4. Box plots showing differences in average temperature by region and season (p-value for regional differences: 0.760, p-value for seasonal differences: <0.001).
Insects 15 00536 g004
Figure 5. Relative abundance of blowflies in each region during each season. (A): Spring, (B): Summer, (C): Autumn, (D): All seasons.
Figure 5. Relative abundance of blowflies in each region during each season. (A): Spring, (B): Summer, (C): Autumn, (D): All seasons.
Insects 15 00536 g005
Figure 6. Variations in the species diversity (H’) and richness (R) of blowflies between different regions and seasons. Vertical bars represent standard deviation.
Figure 6. Variations in the species diversity (H’) and richness (R) of blowflies between different regions and seasons. Vertical bars represent standard deviation.
Insects 15 00536 g006
Figure 7. Two-way hierarchical clustering analysis based on the UPGMA algorithm and Bray–Curtis similarity, and a heatmap representing monthly species abundance. The dendrogram on the left shows a cluster of the nine dominant species. The upper dendrogram shows a cluster of the highest species abundances collected each month. Darker shading in the cells of the array indicates higher abundances.
Figure 7. Two-way hierarchical clustering analysis based on the UPGMA algorithm and Bray–Curtis similarity, and a heatmap representing monthly species abundance. The dendrogram on the left shows a cluster of the nine dominant species. The upper dendrogram shows a cluster of the highest species abundances collected each month. Darker shading in the cells of the array indicates higher abundances.
Insects 15 00536 g007
Figure 8. PCA of relative abundance of environmental parameters (region, season, habitat). BS: Busan, CW: Changwon, GH: Gimhae, TY: Tongyeong.
Figure 8. PCA of relative abundance of environmental parameters (region, season, habitat). BS: Busan, CW: Changwon, GH: Gimhae, TY: Tongyeong.
Insects 15 00536 g008
Table 1. Total Number and Percentage of Collected Blowfly Species During the Investigation Period.
Table 1. Total Number and Percentage of Collected Blowfly Species During the Investigation Period.
SpeciesRegionHabitatTotal CollectedPercent (%)
BSCWGHTYUrbanForest
Calliphora calliphoroides (Rohdendorf, 1931)22644612115291444.1
Calliphora grahami (Aldrich, 1930)16613223720571.6
Calliphora nigribarbis (Vollenhoven, 1863)151174328731662396.9
Calliphora vicina (Robineau-Desvoidy, 1830)825241066821484.3
Hemipyrellia ligurriens (Wiedemann, 1830)-2232570.2
Lucilia caesar (Linnaeus, 1758)36318132572972.8
Lucilia cuprina (Wiedemann, 1830)121-2240.1
Lucilia illustris (Meigen, 1826)3111841571401072477.1
Lucilia porphyrina (Walker, 1856)7072421042382071084129137.2
Lucilia sericata (Meigen, 1826)112131623245182637.6
Melinda pusilla (Villeneuve, 1927)--4-4-40.1
Chrysomya megacephala (Fabricius, 1794)-44576130.4
Chrysomya pinguis (Walker, 1858)632695289618876895627.6
Total10871052824507111123593470100.0
Table 2. Seasonal differences in the relative abundances of blowfly species using Kruskal–Wallis and Dunn’s tests.
Table 2. Seasonal differences in the relative abundances of blowfly species using Kruskal–Wallis and Dunn’s tests.
SpeciesKruskal–Wallis TestDunn’s Test
SeasonSpring vs. SummerSpring vs. AutumnSummer vs. Autumn
Fp
C. calliphoroides10.2030.006 *NSNS0.004
C. grahami6.0480.049 *NSNS0.043
C. nigribarbis7.4490.024 *0.042NSNS
C. vicina5.3650.068 NSNANANA
L. caesar1.3890.499 NSNANANA
L. illustris4.7860.091 NSNANANA
L. porphyrina1.4230.491 NSNANANA
L. sericata0.6180.734 NSNANANA
Ch. pinguis8.1440.017 *NSNS0.013
*, significant difference; NS, non-significant difference; NA, not applied; Dunn’s test, which was applied for only two seasons, and Bonferroni correction (0.05 > p-value * 3 tests) was required.
Table 3. Habitat preferences of blowflies collected in Gyeongsangnam-do.
Table 3. Habitat preferences of blowflies collected in Gyeongsangnam-do.
SpeciesUrban:ForestChi-Squared
C. calliphoroides1:0.38χ2 = 23.937, df = 1, p < 0.001 *
C. grahami1:0.48χ2 = 8.471, df = 1, p = 0.004 *
C. nigribarbis1:1NA
C. vicina1:0.81χ2 = 1.774, df = 1, p = 0.183 NS
L. caesar0.62:1χ2 = 4.016, df = 1, p = 0.045 *
L. illustris1:0.75χ2 = 4.719, df = 1, p = 0.030 *
L. porphyrina0.54:1χ2 = 50.562, df = 1, p < 0.001 *
L. sericata1:0.25χ2 = 47.459, df = 1, p < 0.001 *
Ch. pinguis0.57:1χ2 = 18.847, df = 1, p < 0.001*
*, significant difference; NS, non-significant difference; NA, not applied.
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Oh, H.-S.; Baek, I.-S.; Kang, M.-G.; Park, S.-H. Spatio-Temporal Influence on the Distribution of Forensically Relevant Blowflies (Diptera: Calliphoridae) in Gyeongsangnam-do, South Korea. Insects 2024, 15, 536. https://doi.org/10.3390/insects15070536

AMA Style

Oh H-S, Baek I-S, Kang M-G, Park S-H. Spatio-Temporal Influence on the Distribution of Forensically Relevant Blowflies (Diptera: Calliphoridae) in Gyeongsangnam-do, South Korea. Insects. 2024; 15(7):536. https://doi.org/10.3390/insects15070536

Chicago/Turabian Style

Oh, Hyeon-Seok, In-Seong Baek, Min-Gyu Kang, and Sang-Hyun Park. 2024. "Spatio-Temporal Influence on the Distribution of Forensically Relevant Blowflies (Diptera: Calliphoridae) in Gyeongsangnam-do, South Korea" Insects 15, no. 7: 536. https://doi.org/10.3390/insects15070536

APA Style

Oh, H. -S., Baek, I. -S., Kang, M. -G., & Park, S. -H. (2024). Spatio-Temporal Influence on the Distribution of Forensically Relevant Blowflies (Diptera: Calliphoridae) in Gyeongsangnam-do, South Korea. Insects, 15(7), 536. https://doi.org/10.3390/insects15070536

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop