Effective Demand Forecasting in Health Supply Chains: Emerging Trend, Enablers, and Blockers
Abstract
:1. Introduction
2. Review of Literature
2.1. Early Literature on Forecasting
2.2. Health Supply Chains
2.3. Forecasting in Health Supply Chains
- Demand forecasting allows manufacturers to invest in manufacturing capacity, ensuring supply matches the demand and take advantage of economies of scale.
- Forecasting helps identify demand gaps in the healthcare market and informs manufacturers and researchers allowing them to allocate resources to develop solutions for the existing gaps. This will facilitate the response of the healthcare community to LMIC needs and accelerate the pace of product availability.
- Forecasting supports local pharmaceutical manufacturing in LMICs, thereby strengthening health systems’ response to reducing disease burden and improving the quality of life.
- Forecasts help donors and the international community to allocate funds efficiently by ensuring appropriate prices and adequate supplies of health commodities.
- Forecasting can identify and highlight the demand- and supply-side constraints to guide policy and advocacy efforts. This can contribute towards broadening access and shaping future healthcare portfolio, especially in LMICs.
2.4. Risks Associated with Forecasting
3. Methodology
3.1. Sources of Information, and Inclusion and Exclusion Criteria
3.2. Keyword Definition and Search
3.3. Articles Review and Selection
3.4. Articles and Results
4. Results
4.1. Descriptive Analysis
4.1.1. Analysis of Articles by Year of Publication
4.1.2. Analysis of Articles by Primary Area of Focus
4.1.3. Analysis of Articles by Research Methodology
4.2. Content Analysis
4.2.1. Emerging Trends Influencing Global Health
New Sources of Funds
An Array of New Health Commodities
New Customers
Innovative Business Models
More Intermediaries
4.2.2. Consequences of Inaccurate Demand Forecasting for Health Supply Chains
5. Findings and Discussion
6. Recommendations
- To build the forecasting capacity, a clear understanding of demand forecasting must be embedded across all health supply chain systems, especially in a resource-constrained set-up. All agencies involved in health supply chain forecasting should adhere to standard principles to support decisions made based on the forecasts. This will support understanding the market dynamics and mitigate risks.
- It is universally accepted across the global health supply chain communities that better data, its management, and information sharing will yield accurate forecasts. The advantages of these accrue from two source-diversity of information provides a better idea of the supply chain constraints and preferences to the various stakeholders, and it can lead to confirmation effect [51]. One of the main reasons in global health supply chains for not embracing information sharing is the skewed distribution of incentives. As explored in the literature and examined in this study, risks across different stakeholders are not aligned to match the demand and supply of health commodities [60,64]. Information culture and politics act as the main hurdles prohibiting the exchange of information [70]. The establishment of an information intermediary can be an important step towards solving these issues. The intermediary will act as the central custodian of all forecasting activities. It will lead the data collection and analyzing phase, supported by market research and transparent baselines at the country and regional levels. This will ensure a continual practice of collecting and updating forecasting information.
- Risk allocation across the health supply chains can be achieved through effecting contracting practices. This can include a minimum purchase agreement, buyback contracts, revenue sharing models, and flexible quantity contracts [52,65]. It to be borne in mind that a single contracting type might not be suitable for all situations. A combination approach should be explored for better risk allocation and improved demand forecasting of health commodities.
- Private sector participation is becoming crucial for the successful implementation of health interventions and makes health commodities more accessible. Thus, the policy interventions in the public sector might not impact the private sector, until the major bottlenecks are removed.
Limitation and Future Scope
7. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
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Authors | Health | SCM | Forecasting | Risks | Incentives |
---|---|---|---|---|---|
Lee, et al., [1] | NA | * | NA | * | NA |
Kraiselburd, et al., [2] | * | * | NA | NA | NA |
Sued, et al., [3] | * | * | NA | NA | NA |
Assmus [4] | NA | NA | * | NA | NA |
Stark, et al., [5] | * | NA | * | NA | NA |
Mahajan, et al., [8] | NA | NA | * | NA | NA |
Kahn, [12] | NA | NA | * | NA | NA |
Meade, et al., [14] | NA | NA | * | * | NA |
Kasapoglu, [15] | * | NA | * | NA | NA |
Jbaily, et al., [16] | * | * | NA | NA | NA |
Matthews, [18] | NA | * | NA | * | NA |
Moschuri, et al., [19] | * | * | NA | NA | NA |
Jarret, [20] | * | * | NA | NA | NA |
Magali, [21] | * | * | NA | NA | NA |
Sullivan, et al., [24] | * | * | NA | NA | NA |
Sekhri, et al., [25] | * | NA | * | * | NA |
USAID, [26] | * | * | * | NA | NA |
Sekhri, et al., [27] | * | NA | * | NA | NA |
Nikolopoulos, et al., [28] | * | NA | * | NA | NA |
Mas-Machuca, et al., [29] | NA | NA | * | NA | NA |
Schaefer, et al., [30] | * | NA | * | * | NA |
Adler, et al., [31] | * | NA | NA | NA | NA |
Hodgson, et al., [32] | * | NA | * | NA | NA |
Mackintosh, et al., [34] | * | * | NA | NA | NA |
Soyiri, et al., [35] | * | NA | * | NA | NA |
Steele, et al., [36] | * | * | * | NA | NA |
Yadav, et al., [38] | * | * | NA | NA | * |
Dixon-Woods, et al., [39] | * | NA | NA | * | NA |
Wolfgang, et al., [40] | NA | * | * | NA | NA |
Hermes, et al., [41] | * | NA | NA | * | NA |
Barder, et al. [42] | * | NA | NA | * | NA |
Taylor, [45] | * | NA | NA | * | NA |
Bollyky, et al., [46] | * | NA | NA | * | NA |
Grépin, et al., [47] | * | NA | NA | * | NA |
Grace, [48] | NA | * | NA | * | NA |
Bulíř, et al., [49] | * | NA | NA | * | NA |
Yadav, et al., [50] | NA | * | * | NA | NA |
Brun, et al., [51] | NA | * | NA | NA | NA |
Chen, et al., [52] | NA | * | NA | * | NA |
Duong, et al., [53] | * | * | NA | * | NA |
Duong, et al., [54] | * | * | NA | NA | NA |
Fisher, [55] | NA | * | NA | * | NA |
Seidman, et al., [56] | NA | * | NA | * | NA |
Ejughemre, [57] | * | NA | NA | * | NA |
Chalkidou, et al., [58] | * | NA | NA | * | NA |
Current study | * | * | * | * | * |
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Subramanian, L. Effective Demand Forecasting in Health Supply Chains: Emerging Trend, Enablers, and Blockers. Logistics 2021, 5, 12. https://doi.org/10.3390/logistics5010012
Subramanian L. Effective Demand Forecasting in Health Supply Chains: Emerging Trend, Enablers, and Blockers. Logistics. 2021; 5(1):12. https://doi.org/10.3390/logistics5010012
Chicago/Turabian StyleSubramanian, Lakshmy. 2021. "Effective Demand Forecasting in Health Supply Chains: Emerging Trend, Enablers, and Blockers" Logistics 5, no. 1: 12. https://doi.org/10.3390/logistics5010012
APA StyleSubramanian, L. (2021). Effective Demand Forecasting in Health Supply Chains: Emerging Trend, Enablers, and Blockers. Logistics, 5(1), 12. https://doi.org/10.3390/logistics5010012