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Article

Effects of Debt Financing Decisions on Profitability: A Comparison of USA and Europe Biopharmaceutical Industry

Jennings A. Jones College of Business, Middle Tennessee State University, Murfreesboro, TN 37130, USA
Int. J. Financial Stud. 2025, 13(3), 130; https://doi.org/10.3390/ijfs13030130 (registering DOI)
Submission received: 18 March 2025 / Revised: 16 May 2025 / Accepted: 30 June 2025 / Published: 9 July 2025

Abstract

Debt financing is important for financing major investments in the biopharmaceutical industry. Debt financing allows companies to raise funds without giving up ownership or control through indenture and covenants of the company. In this study, I analyze the effects of debt financing decisions on profitability in the biopharmaceutical industry. I find that short-term debt, long-term debt, and total debt negatively impact the return on assets (ROA) as a firm’s profitability measure. A comparison is made between American and European biopharmaceutical firms, and the result shows the negative effects of short-term and long-term debt on profitability persist more for US biopharmaceutical firms than European firms. Short-term and long-term debt both impact profitability negatively with 10-year lagged R&D intensity and financial distress. Short-term debt’s negative impact is stronger post-COVID-19, indicating increased financial strain. Long-term debt consistently affects profitability negatively, with relatively stable effects during the pre- and post-COVID-19 pandemic.

1. Introduction

Debt financing is important for financing major investments like R&D in the biopharmaceutical industry. Debt financing allows companies to raise funds without giving up ownership or control through indenture and covenants of the company. Debt financing provides greater flexibility for firms in biopharmaceutical industry to finance highly intensive research and development (R&D).
Debt financing is a factor that can significantly impact a company’s net revenue (Kruk, 2021; Gill et al., 2011). Debt financing or the borrowing of funds to finance a company’s operations and investments can have two impacts on the firm. Debt financing provides the necessary capital for expansion and innovation. Conversely, it introduces financial commitments that may place considerable pressure on a firm’s resources, particularly in industries characterized by high capital intensity and intense innovation-driven competition. The biopharmaceutical industry in the United States is an example of such a sector, making it an ideal place to investigate these relationships. When firms are selecting debt to finance their operations and investments, they face decisions regarding the appropriate types of debt.
Debt financing is a key consideration for firms seeking to fund projects. This study explores the following: how do short-term and long-term debt influence profitability in the biopharmaceutical sector? Through what mechanisms do they affect profitability? The diverse range of debt instruments, both short- and long-term, provides flexibility in financial strategies. The impact of debt on profitability remains a subject of debate, with conflicting findings in previous studies. While some suggest that debt can lower the cost of capital and enhance profitability (Tailab, 2014; Abor, 2005), others argue that higher interest payments may decrease overall profitability (Bhutta & Hasan, 2013).
Focusing specifically on the biopharmaceutical industry, my interest in analyzing the impact of debt financing is driven by the industry’s unique characteristics. The biopharmaceutical sector attracts significant attention due to continuous advancements in R&D, strong investor demand for higher returns, and the imperative for companies to replenish their pipelines. Furthermore, the industry’s critical role in addressing global health challenges, such as the COVID-19 pandemic, underscores its financial and economic significance.
Debt financing is essential to the biopharmaceutical industry, allowing companies to undertake large R&D activities, grow medication pipelines, and respond quickly to global health emergencies. In this capital-intensive industry, debt provides the financial resources required to drive innovation, maintain competitive market positions, and cover operating costs. It helps biopharmaceutical companies negotiate the complexity of medication discovery, manufacturing, and market dynamics, hence promoting long-term growth and breakthroughs in healthcare.
As the biopharmaceutical industry stands at the intersection of innovation, healthcare, and economic impact, understanding the dynamics of debt financing and its influence on profitability is important because debt financing minimizes agency costs (Jensen & Meckling, 1976), serve as indicators of firm quality (Myers & Majluf, 1984), and might influence firm’s profit. The strategic decisions made by companies in this sector not only shape their financial performance but also contribute to advancements in healthcare, making it a focal point for financial and strategic analysis (Thakor & Lo, 2015). The strategic decisions made by companies in this sector not only shape their financial performance but also contribute to advancements in healthcare, making it a focal point for financial and strategic analysis. Therefore, debt financing decisions raise important questions regarding how biopharmaceutical firms use their financial structures to influence profitability.
This study addresses several important gaps in the existing literature. First, it separates the impacts of short-term and long-term debt on firm profitability, rather than using a single aggregated debt measure. Second, it provides an industry-specific focus on the biopharmaceutical sector, known for its high R&D intensity and financial complexity. Third, it investigates how lagged R&D investments and financial distress affect the debt–profitability relationship—two often overlooked factors. Lastly, by comparing firms in the U.S. and Europe, this study highlights how institutional differences influence the effect of financial structure on performance. This study explores the intricate relationship between debt financing and firm profitability in the biopharmaceutical industry. It tests three main hypotheses: first, whether total debt financing significantly influences profitability; second, whether short-term debt has a more negative impact on profitability than long-term debt; and third, whether this relationship is moderated by lagged R&D intensity and financial distress. Given the capital-intensive nature and long innovation cycles in the biopharmaceutical sector, debt structure can play a critical role in shaping firm performance. Prior studies often consider debt in aggregate terms, overlooking the distinct implications of debt maturity and contextual industry dynamics. This study aims to fill that gap by providing industry-specific evidence on how short- and long-term debt, when interacted with firm innovation efforts and financial health, influence profitability.
In this study, I examine 687 publicly traded biopharmaceutical firms in the U.S. and Europe using Compustat data from 1990 to 2022, yielding 4284 firm-year observations. Using two-way fixed effects and dynamic panel estimations, I find that both short-term and long-term debt have a negative impact on firm profitability. This is primarily due to increased interest expenses associated with higher debt levels, which reduce profits. From an economic significance standpoint, I find that a one-standard-deviation increase in short-term debt leads to a 13.7% decline in profitability, after accounting for firm-specific and macroeconomic controls. This negative effect is more pronounced for U.S. firms than for their European counterparts. In addition, the result shows that long-term debt reduces profitability for biopharmaceutical firms. The economic significance of the negative relationship between long-term debt and profitability is that an increase in one standard deviation of long-term debt relates to a 2.55 percent standard deviation decrease in profitability. This highlights a strong negative effect of long-term debt on profitability among pharmaceutical firms in the U.S.
Total debt, which combines both short-term and long-term debt, has a negative effect on profitability and is statistically significant at 1 percent. There is a strong negative impact of long-term debt on profitability for pharmaceutical firms in the USA as compared to European biopharmaceutical firms.
Furthermore, I examine the mechanisms through which debt financing affects profitability. The results show that short-term and long-term debt impact profitability negatively with 10-year lagged R&D intensity and financial distress. Biopharmaceutical firms heavily invest in R&D, often necessitating debt financing. However, the finding reveals that long-term debt negatively impacts profitability when combined with 10-year lagged R&D intensity and financial distress. This suggests that, while R&D is essential for innovation, high levels of R&D spending paired with long-term debt can strain profitability. Similarly, financial distress exacerbates the negative effects of long-term debt, highlighting the need for effective financial distress management.
This paper contributes to the existing literature that relates how the composition of debt affects profitability. Some studies (Tyagi & Nauriyal, 2016; Pervan et al., 2019) overlook how short-term and long-term debt impact profitability separately.
This study contributes to the literature by providing a comprehensive examination of the interaction between long-term debt, lagged R&D, and financial distress within the biopharmaceutical industry. It offers practical insights for financial managers and policymakers seeking to align debt financing strategies with long-term profitability and sustainability.
This study focuses on the biopharmaceutical industry, which is characterized by increased competitiveness, which drives innovation. In response to the need for constant innovation, biopharmaceutical businesses frequently rely on higher debt to fund projects. However, my findings show that increased debt levels are associated with a decrease in profitability, defying the understanding that debt drives growth and financial success in this dynamic market.
The rest of this paper is organized as follows: Section 2 reviews the relevant theoretical and empirical literature. Section 3 outlines the data and empirical methodology, which includes empirical estimation methods. The empirical findings are presented in Section 4. In Section 5, this study’s summary and conclusion are presented. The data and variables used in this study is described in the Appendix A.

2. Literature Review and Development of Hypotheses

According to Modigliani and Miller (1958); Frank and Goyal (2009); and DeAngelo and Roll (2015), debt does not affect the value of the firm, so any structure of debt adopted by any firm at any point in time is as good as any other in the absence of corporate tax. Relaxing certain assumptions of the M&M theory from their original proposition in the earlier literature has shown that capital structure can influence profitability1. Tyagi and Nauriyal (2016) examined the profitability of the Indian biopharmaceutical sector. Their study employed an OLS regression model with Driscoll–Kraay standard errors and used inflation-adjusted panel data from 2000 to 2013. Export intensity, advertising and market intensity, firm market power, and a stronger patent regime all contribute positively to profitability. According to MM theory, firms can enhance profitability by increasing debt financing to take advantage of tax shields. Therefore, higher leverage is expected to have a positive impact on profitability.
Some authors, including Myers (1977), Jensen and Meckling (1976), Jensen and Meckling (1976), Harris and Raviv (1991), Ahmed et al. (2017), and Fosu (2013), have improved the classic capital structure by incorporating control variables. The authors conducted empirical studies based on several capital structure theories. Various theories include trade off, pecking-order, information asymmetry, signaling, product/input market interaction, and market-timing theories.
Consequently, in 1958, Modigliani–Miller’s MM theory was developed into trade-off theory2. The trade-off theory focuses on debt repayment and costs of debt issuance, and it predicts that a desirable target debt ratio would add value to the business. Rather than constantly issuing debt to improve firm value, the trade-off theory asserts that firms must strive towards a specific level of debt financing to achieve the optimal company value. Kraus and Litzenberger (1973); López-Gracia and Sogorb-Mira (2008); and Graham and Leary (2011) stated that firms should aim for debt levels that maximize tax benefits while minimizing bankruptcy risks. Jawade (2014) analyzed the effect of capital structure on biopharmaceutical company performance across a range of market capitalizations. The author showed that capital structure provides growth prospects, maintains solvency, and provides an excellent return to stakeholders without the dilution of management control; firms must trade-off between the tax benefits of debt and the consequences of bankruptcy.
Myers and Majluf (1984) and Lemmon et al. (2008) posited the pecking order theory as an alternative to the trade-off theory. According to this hypothesis, when a company needs external funding, it favors debt over equity. It also predicts that riskier firms will have higher leverage ratios. Investors and managers have a greater incentive to take on riskier projects when a firm’s debt financing allocation rises. Mohammadzadeh et al. (2013) examined the relationship between capital structure and profitability in Iranian bio-pharmaceutical enterprises. The top 30 Iranian biopharmaceutical businesses were studied, and their financial data was collected from 2001 to 2010. This study used the net margin profit and the debt ratio as profitability and capital structure indices, respectively, with sales growth as a control variable. The findings revealed a significant negative association between debt and profitability. The results also support the pecking order theory in Iranian biopharmaceutical companies. They indicate that increased debt financing negatively affects profitability, consistent with the theory’s emphasis on prioritizing internal financing over external debt due to its associated costs and risks. Other researchers have similarly concluded that internal funds, such as retained earnings, are the preferred first source of financing, with debt securities used only when internal resources are insufficient (Frank & Goyal, 2009; Rasiah & Kim, 2011).
Thus, the use of debt to finance investment projects in the biopharmaceutical industry can positively or negatively affect profitability in a competitive environment. I argue that debt financing does not only affect profitability directly but also influences biopharmaceutical firms’ profitability indirectly through 10-year lagged R&D and financial distress.

2.1. Development of Hypotheses

Three key testable hypotheses are established based on theoretical predictions and historical empirical evidence.
The relationship between debt financing and profitability
Debt financing involves borrowing funds to support business operations or investments, which is either short-term or long-term debt (Allen, 2019). The combination of short-term and long-term debt is the total debt. Debt requires firms to make periodic interest payments, which not only reduce profits in the current accounting period but may also limit available cash for operations in the subsequent period. Debt financing can provide a tax shelter for profits associated with high financial risk; hence, all firms should consider how much debt capital they should maintain to benefit from such trade-offs. The costs of securing new external financing are generally higher than those of using internal funds, as internal financing avoids transaction costs. Previous studies have found mixed evidence regarding the relationship between debt financing and profitability: some report a positive association (Habib et al., 2016; Margaritis & Psillaki, 2010), while others observe a negative link (Habib et al., 2016; Sadiq & Sher, 2016). Weill et al. (2008) further demonstrate that the impact of debt financing on firm performance can be either positive or negative, depending on industry history, current economic conditions, and broader macroeconomic factors. Given these complexities, it is important to empirically test how different levels of debt relate to firm profitability. Accordingly, I examine the following:
Hypothesis 1.
Debt finance has a significant relationship with profitability.
Short-term debt refers to obligations that last shorter than a year and are typically related to internal or external company concerns while long-term debt refers to a company’s borrowing or external finance that is repayable over a longer period of time. Short-term debt is riskier and has a greater impact on profitability than long-term debt due to several factors. The frequent and immediate repayment schedules associated with short-term debt create significant liquidity pressures, forcing firms to allocate substantial cash flow to debt servicing. This can strain resources, limit funds available for strategic investments like R&D and reduce overall financial flexibility. Additionally, short-term debt often comes with higher and more volatile interest rates, increasing interest expenses and financial uncertainty. Short-term debt has a greater negative influence on biopharmaceutical industry profitability than long-term debt because of higher periodic interest payments and the urgency of repayment. I hypothesize that
Hypothesis 2.
Short-term debt has a more negative impact on profitability than long-term debt.

2.2. Mechanisms Through Which Debt Financing Affects Profitability

Interaction between debt and lagged of R&D on Profitability
R&D investments in the biopharmaceutical industry typically take considerable time to impact a firm’s profitability. Firstly, new drugs undergo extensive preclinical and clinical trials spanning approximately 10 years. Secondly, FDA approval is essential to ensure safety, efficacy, and quality, adding complexity and time to the process. Thirdly, translating successful R&D into economic benefits involves patenting innovations, a time-consuming process to protect against competitors. Therefore, immediate financial gains from R&D investments may not be realized if the benefits of innovative products do not sufficiently outweigh their costs. Thus, the impact of debt on profitability when combined with lagged R&D investments in the biopharmaceutical industry can vary. Wang and Wu (2014) and Lim and Rokhim (2020) found a negative impact of current expenditure on performance using the ROA but a positive and significant effect of one-year lagged expenditure on profitability. Debt may provide necessary funding for R&D activities, contributing positively to future profitability through innovation and market competitiveness. However, excessive debt levels could increase financial risk and interest expenses, potentially negatively impacting profitability. I hypothesized that
Hypothesis 3a.
There is a significant effect of debt and lagged R&D on a firm’s profitability.

2.3. Interaction Between Debt and Financial Distress on Profitability

Financially distressed biopharmaceutical firms with high debt face adverse impacts on profitability due to increased interest expenses, the risk of default, reduced investor confidence and market valuation, strategic constraints on R&D and growth investments, heightened regulatory scrutiny, and competitive disadvantages against financially stable peers. These factors collectively hinder financial stability, operational effectiveness, and long-term growth prospects in a competitive industry reliant on innovation and regulatory compliance. Therefore, I hypothesize that
Hypothesis 3b.
There is a negative effect of debt and financially distressed firms on a firm’s profitability.

3. Data and Empirical Methodology

3.1. Data and Data Sources

This study uses unbalanced panel data consisting of publicly traded biopharmaceutical firms with data available on COMPUSTAT. I considered all audited financial data for biopharmaceutical companies based on 4-digit Standard Industrial Classification (SIC) code (SIC 2833: Medicinal Chemicals and Botanical Products, SIC 2834: Pharmaceutical Preparations, SIC 2835: In Vitro and In Vivo Diagnostic Substances, SIC 2836: Biological Products, Except Diagnostic Substances) retrieved from COMPUSTAT. I merged the resulting sample of the COMPUSTAT data with macroeconomic data (inflation, real gross domestic product per output and interest rate) from the Federal Reserve Economic (FRED) from 1990–2022. The final sample comprises 687 US and European public-traded biopharmaceutical firms and 4284 firm-year observations from 1990 to 2022. A total of 485 firms belong to the US, while 202 firms belong to Europe. The European countries with biopharmaceutical firms are Belgium, Switzerland, Germany, Denmark, Spain, France, United Kingdom, Ireland, Luxembourg, the Netherlands, Norway, and Sweden. Out of 687 firms, 45 firms did not report R&D. Therefore, R&D expenses were set to zero when they were not reported, and those firms are found in Appendix A.

3.2. Definition and Measurement of Variables

The definition of all variables with expected signs is found in the Appendix A. I defined the dependent and independent variables to be used in this study so that they were consistent with those of Rajan and Zingales (1995), Loderer and Waelchli (2010), Abor’s (2005), Fosu (2013), and Pervan et al. (2019).

3.3. Empirical Model and Estimation Strategy

Theoretically, the leverage–profitability relationship is expressed in Equation (1) after controlling for firm-specific characteristics. These variables were chosen based on the prior literature and their theoretical significance in determining a firm’s profitability.
R O A i t = α + β d e b t i t + ω c o n t r o l s i t + ε i t
R O A i t is firm i’s profit in year t. The return on assets (ROA) was used in prior research and by managers and other stakeholders, supporting the use of ROA as a measure of profitability (Baum et al., 2006; Kebewar, 2013; Pervan et al., 2019). As a result, this study employs ROA as a profitability metric, and it is the dependent variable in the data analysis. It was measured as earnings before interest, taxes, depreciation, and amortization. The main explanatory variable is debt. D e b t measures the debt financing decisions such as total debt, long-term, and short-term debt and they are measured in percentages. C o n t r o l s are the firm-level variables that include firm age, firm size, R&D intensity, cash holding, capital intensity, growth opportunity and macroeconomic variables such as real GDP, interest rate, inflation, and global financial crisis (2007–2009). I lagged the variables to address endogeneity and reverse causality issues.

3.4. Method of Estimation

The relationship between debt and a firm’s profitability at time t can be expressed in Equation (2) using two fixed effect estimations:
I expect that companies in the sample may have other unobserved idiosyncrasies that distinguish them from one another. To determine and control for the unobserved individual-specific firm and year effects, I use two-way fixed as depicted in Equation (2):
P r o f i t = α + β D e b t s i t + θ x + μ i + ε i t
Mechanisms through which debt financing influences profitability
P r o f i t = α + β D e b t s i t + θ d e b t s m e c h a n i s m + c o n t r o l s + μ i + ε i t
where P r o f i t represents the profitability of firm i at time t, i = 1, …, N and t = 1, …, T. ϵ i t = μ i + ε i t in that μ i captures the time-invariant firm-specific effects, accounts for unobserved heterogeneity, and ε i t is the white noise. M e c h a n i s m is the 10-year lag of R&D and financial distress.
The fixed-effects model controls for the potential correlation between regressors’ and unobservable individual effects. The fixed effects approach takes to be a group-specific constant term in the regression model (Wooldridge, 2012). The use of the fixed effects helps to address the problem of possible endogeneity concerns. By analyzing the within-firm variance in profitability across time, I included firm fixed effects and firm-specific controls like age, tangibility, etc., to address this concern. Also, I introduce year fixed effects to account for unobserved time-specific shocks influencing all firms (Grullon et al., 2018). I use cluster-robust standard error estimations at the firm level to control for possible heteroscedasticity and autocorrelation.

4. Results and Discussions

4.1. Summary Statistics

Table 1 shows how the number of firms varies across years. The year 2022 has the highest number of firms with 1990 having the lowest number of biopharmaceutical firms. Table 2 presents the summary statistics for dependent and independent variables. I winsorize all continuous variables at the 1st and 99th percentiles in the analysis to reduce the influence of outliers (Campbell et al., 2008; Loderer & Waelchli, 2010). I use two measures for firm profitability. The first measure is calculated as the ratio of earnings before interest, taxes, depreciation and amortization over total assets (EBITDA/TA), and it is the main measure. The second measure is measured as the ratio of net income over total assets (NI/TA). A firm’s profitability as measured by the return on assets (ROA) depicts an average of 6 percent decrease in total assets. Having a negative ROA indicates that biopharmaceutical firms have a downward trend in profitability. The average short-term debt ratio of 18.9 percent indicates that biopharmaceutical firms utilize a relatively large portion of their total debt (28.9 percent) for short-term financing needs relative to the long-term debt of 10.52 percent. This suggests that biopharmaceutical firms rely heavily on short-term debt to fund their operations. The average firm age of around 9 years suggests that many firms in the biopharmaceutical industry are relatively young. This reflects the dynamic and innovative nature of the sector, with many new entrants focused on breakthrough technologies and treatments. R&D intensity, which measures R&D expenditure as a percentage of total asset, is about 21.56 percent. This high R&D intensity shows the industry’s commitment to innovation and the significant resources allocated to developing new drugs and treatments.
Table 3 shows the descriptive statistics in the subsample of firms in US and Europe. US biopharmaceutical firms have a mean profitability of 7.87 percent, while European firms have a mean of 2.36 percent. This indicates that US firms, on average, generate higher profitability compared to their total assets compared to European firms, suggesting potentially higher efficiency in asset utilization or stronger market positioning. Also, US biopharmaceutical firms maintain a mean short-term debt ratio of 16.31 percent, compared to 14.52 percent for European firms. This difference implies that US firms rely more on short-term debt relative to their total assets, which may indicate varying strategies in managing liquidity and financing short-term obligations. US firms have a mean long-term debt ratio of 10.66 percent, while European firms have a mean of 8.82 percent. The higher mean long-term debt ratio among US firms suggests a greater reliance on long-term financing for capital investments and strategic initiatives relative to their total asset base.
Figure 1 shows how short-term debt and long-term debt vary across years.

4.2. Correlation Matrix

The correlation matrix is displayed in Table 4. From Table 4, short-term debt and long-term debt are negatively correlated with the ROA. The variance inflation factors (VIFs) for the rest of the main explanatory variables and controls are within the acceptable limits (1.24–3.82).

4.3. Discussion of Empirical Results

Table 5 shows the result of the hypothesis test using a paired t-test. The result is to prove whether the short-term and long-term debt variables individually have an influence on profitability. The result shows that the p-value is less than 1 percent, meaning that short-term and long-term debt individually have an influence on profitability.
Test the difference between short-term debt and long-term debt.
t = 39.8290.
Degrees of freedom = 4283.
Hypothesis:
Null hypothesis: There is no difference between short-term debt and long-term debt.
Alternative hypothesis: There is no difference between short-term debt and long-term debt.
Table 6 shows the regression of how short-term debt affects profitability. Without any controls, short-term debt affects profitability negatively by 44.7 percent and is statistically significant at 1 percent. For economic significance, a one-standard-deviation increase in short-term debt leads to a 13.7 percent decrease in profitability. Column 2 shows that short-term debt has a statistically significant negative effect on profitability (ROA) with all controls. From economic significance, a one-standard-deviation increase in short term relates to a 13.1 percent decrease in profitability. Columns 3 and 4 display how short-term debt affects profitability among the American and European biopharmaceutical industry. The coefficient for short-term debt shows a negative effect on profitability and is statistically significant at 1 percent. This suggests that, in the USA, an increase in short-term debt is associated with a substantial and significant decrease in profitability, but there is no statistically significant relationship between short-term debt and profitability for European biopharmaceutical firms.
Table 7 displays the effect of long-term debt on profitability. Long-term debt affects profitability negatively by 22.85 percent and statistically significant at 1 percent without any controls. Column 2 shows that the coefficient of long-term debt has a negative effect on profitability and is statistically significant at 1 percent when controls are included. Regarding economic significance, a one-standard-deviation increase in long-term debt leads to a 2.2 percent decrease in profitability. Columns 3 and 4 display how long-term debt affects profitability among the American and European biopharmaceutical industry. The coefficient for long-term debt shows a negative effect on profitability and is statistically significant at 1 percent. The negative impact of long-term debt on the ROA is statistically significant in the USA, suggesting a clear relationship between increased long-term debt and decreased profitability. However, in Europe, the relationship is not statistically significant, indicating no clear impact of long-term debt on profitability. This is in line with hypothesis 2, which states that short-term debt impacts profitability more than long-term debt.
In Table 8, there is a negative impact of total debt on the ROA, which is statistically significant at 1 percent. This shows a clear relationship between increased total debt and decreased profitability. This is in line with hypothesis 1 that states that debt financing (total debt) has a significant effect on profitability.
Table 9 and Table 10 examine the channels through which short-term and long-term debt affect profitability. In column 1 of Table 5, the interaction suggests that, although short-term debt alone might reduce profitability, combining it with 10-year lagged R&D intensity can potentially enhance profitability. This implies that there is a synergistic effect, meaning firms that have invested in R&D in the past might use short-term debt more effectively. This could be because the innovative products developed from earlier R&D efforts eventually become profitable. However, the interaction term between long-term debt and 10-year lagged R&D suggests a positive relationship with profitability but not statistically significance, as shown in Table 10.
The interaction term between short-term debt and financial distress is negative and statistically significant. This means that, when short-term debt and financial distress occur together, they significantly worsen profitability. Biopharmaceutical firms facing financial distress are particularly harmed by short-term debt, likely because of higher borrowing costs and less financial flexibility. In Table 10, when both long-term debt and financial distress are present, the negative impact on profitability worsens. Firms in a situation of financial distress may find long-term debt especially burdensome, likely due to increased difficulties in managing and servicing debt over a long period.
The coefficients for short-term debt in models (1) and (2) show a significant negative impact on profitability both before and after the COVID-19 pandemic. Before COVID-19, the effect was quite negative, meaning that higher levels of short-term debt are linked to lower profitability in biopharmaceutical firms. After COVID-19, this negative effect becomes even stronger. The pandemic likely made short-term debt more burdensome for firms due to increased financial uncertainty and operational disruptions. Similarly, the coefficients for long-term debt in models (3) and (4) indicate a clear negative impact on profitability both before and after the COVID-19 pandemic. Before COVID-19, long-term debt reduced profitability. This negative effect remains significant but became slightly less severe after COVID-19. The persistent negative effect of long-term debt on profitability implies that long-term debt imposes a continuous financial strain on biopharmaceutical firms, likely due to the ongoing costs associated with servicing the debt, as displayed in Table 11.

5. Robustness Check

For the robustness test, I employ the system dynamic panel data (DPD) estimator to estimate the econometric model in Equation (1). The DPD integrates equations involving differences and levels. In this System GMM approach (Blundell & Bond, 2000), lagged levels act as instruments for the differenced equations, while lagged differences are employed as instruments for the level equations. I measure the ROA as the net income divided by total assets, and it is the dependent variable in the data analysis. It is measured as earnings before interest, taxes, depreciation, and amortization. The main explanatory variable is debt. Debt measures the debt financing decisions such as total debt, long-term, and short-term debt, and they are measured in percentages. The findings from Table 12 highlight that both short-term and long-term debt negatively affect profitability in biopharmaceutical firms. Short-term debt has a more negative effect compared to long-term debt. When considering total debt, the negative impact on profitability remains significant, emphasizing the need for the careful management of debt financing to sustain profitability in the biopharmaceutical industry.

6. Conclusions and Recommendations

Debt financing is important for financing major investments like R&D in the biopharmaceutical industry. Debt financing allows companies to raise funds without giving up ownership or control through indenture and covenants of the company. Debt financing provides greater flexibility for firms in the biopharmaceutical industry to finance highly intensive research and development (R&D).
The choice of debt financing is an important decision for companies aiming to fund their projects. This paper poses research questions: How do short-term and long-term debt impact profitability within the biopharmaceutical industry? What are the ways through which short-term and long-term debt affect profitability? The diverse range of debt instruments, both short and long term, provides flexibility in financial strategies.
The results show that short-term debt, long-term debt, and total debt negatively impact the return on assets (ROA) as a firm’s profitability measure. A comparison is made between American and European biopharmaceutical firms, and the result shows that the negative effects of short-term and long-term debt on profitability persist more for US biopharmaceutical firms than European firms. Short-term and long-term debt both impact profitability negatively with 10-year lagged R&D intensity and financial distress. Short-term debt’s negative impact is stronger post-COVID-19, indicating increased financial strain. Long-term debt consistently affects profitability negatively, with relatively stable effects during the pre- and post-COVID-19 periods.
The empirical findings from this research have some interesting implications for policymakers in the biopharmaceutical industry. Firstly, they emphasize the importance of prudent debt management strategies, particularly for US biopharmaceutical firms, where the negative impact of both short-term and long-term debt on profitability is more pronounced compared to European counterparts. This suggests a need for careful monitoring and sustainable debt practices to mitigate financial strain, especially post-COVID-19.

Funding

The author declares that this research was conducted without the support of any external funding agency, commercial or not-for-profit sectors. No grants or financial assistance were received for the design, execution, analysis, or publication of this study. Additionally, the Article Processing Charge (APC) was not supported by any external funding source and was covered independently by the author.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Restrictions apply to the availability of these data. The data were obtained from Compustat and are available from the authors with the permission of Compustat. Due to licensing restrictions, the data cannot be shared publicly.

Conflicts of Interest

The author declares that there are no conflicts of interest regarding the publication of this paper, whether financial, professional, or personal.

Appendix A

Table A1. In total, 45 firms reporting zero R&D.
Table A1. In total, 45 firms reporting zero R&D.
Company Legal NameCompany Legal Name
NBTY IncMedMen Enterprises Inc
Nabi Biopharmaceuticals-OldGreen Thumb Industries Inc
Sigma-Aldrich CorpTrulieve Cannabis Corp
HST Global IncCuraleaf Holdings Inc
Unigene Laboratories IncCresco Labs Inc
Natural Alternatives International InccbdMD Inc
Acelity Holdings IncThe Cannabist Company Holdings Inc
Avid Bioservices IncAyr Wellness Inc
NewAge Inc4Front Ventures Corp
MariMed IncUpexi Inc
PDK Labs IncGlass House Brands Inc
Bradley Pharmaceuticals Inc.Smart for Life Inc
Dura Pharmaceuticals IncXstelos Holdings Inc
Pml IncBMP Sunstone Corp
Catalytica IncTransgene SA
NSA International IncNextera Enterprises Inc
Rexall Sundown IncAXM Pharma Inc-Old
NovelStem International CorpLife Sciences Research Inc
IVC Industries IncIGC Pharma Inc
Derma Sciences IncMarizyme Inc
Nanobac PharmaceuticalYoungevity International Inc
Bactolac Pharmaceutical IncItem 9 Labs Corp
Goodness Growth Holdings Inc
Table A2. Definition of variables, expected signs, and data sources.
Table A2. Definition of variables, expected signs, and data sources.
VariableDescription and DefinitionExpected SignData Source
Dependent Variables:
Profitability Indicators
Return on Asset (ROA_1)Measures how well a company can handle its assets to generate profit over time. Calculated as earnings before interest, taxes, depreciation, and amortization (EBITDA) divided by total assets (AT). COMPUSTAT
Return on Asset (ROA_2)Calculated by net income (NI) divided by total assets (AT). COMPUSTAT
Main explanatory variables
Debt:
Short-term debt Short-term debt is a form of debt that matures in less than a year. Short-term liabilities (debt)/total assets.+/−COMPUSTAT
Long-term debt Long-term debt is a form of debt that matures in more than a year. Long-term liabilities (debt)/total assets.+/−COMPUSTAT
Total debt It is the combination of short-term and long-term debt. Total debt/total assets.+/−COMPUSTAT
Other Controls
Firm size (size)Natural logarithm of the company’s total assets.+/−COMPUSTAT
Capital intensity Capital expenditure/total assets.+/−COMPUSTAT
Growth opportunity Market-to-book ratio: Market value of common equity/book value of common equity
The market value was scaled by thousands., i.e., (prcc_f* csho*1000)/1,000,000
The book value is calculated by subtracting total liabilities from total assets.
+/−COMPUSTAT
Research and development intensity Research and development expense divided by total assets.+/−COMPUSTAT
Firm ageThe difference between the year under investigation and the year in which the firm is included in COMPUSTAT.+/−COMPUSTAT
Altman Z-score/
financial distress
The Z-score is a financial indicator that uses various inputs from company income statements and balance sheets to measure a company’s financial status. It is calculated as 1.2 (working capital/total assets) + 1.4 (retained earnings/total assets) + 3.3 (earnings before interest and tax/total assets) + 0.6 (market value of equity/total liabilities) + 1.0(sales/total assets).
I use the above and below the gray zone of the Altman z-score to create a dummy.
1 = No financial non-distress if the Altman z-score is less than 1.8.
0 = Financial non-distress if the Altman z-score is above 1.8.
+/−COMPUSTAT
Young vs. medium vs. old firmsI classify firms aged 1 to 10 years as young firms, and those aged 11 years to 15 years as medium and above 15 years as mature or older firms using firm age (Decker et al., 2016).+/−COMPUSTAT
Inflation rate (Infl)Proxy use is a Consumer Price Index. It is the consumer price index for all urban consumers (entire items, U.S. City). It is percent change, seasonally adjusted annually.+/−FRED St. Louis
Real gross domestic product (RGDP)Real gross domestic product per capita as a measure. It is measured as chained 2012 Dollars and seasonally adjusted annual rate. I scale it by taking the log of it.+/−FRED St. Louis
Interest rateFederal fund rate is the overnight interest rate for depository institutions trading federal funds held at Federal Reserve Banks. Federal Reserve Bank of St. Louis (FRED)

Notes

1
Some of the assumptions of MM model are there are no taxes of any kind. Also, transaction costs for securities are nonexistent, and bankruptcy costs do not apply. Information is perfectly symmetrical, allowing investors equal insights to those of corporations, leading to rational investment behaviors. Borrowing costs are identical for both investors and corporations, and there are no additional expenses associated with issuing securities, such as underwriting fees, payments to bankers, advertising costs, or taxes on corporate dividends.
2
Static and dynamic trade-off theory are two types of trade-off theory. Using debt against equity offers both advantages and downsides, according to the static trade-off hypothesis. As a result, businesses should choose an optimal debt that balances these factors at the margin (Scott, 1977). The dynamic trade-off hypothesis shows that, even in a trade-off environment with a fixed cost of issuing stock, firms can deviate from their goal capital structure by altering leverage. when it exceeds extreme boundaries because when a company makes money, it frequently pays down debt, lowering influence (Frank & Goyal, 2009).

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Figure 1. A graph showing a relationship between short-term and long-term debt across years.
Figure 1. A graph showing a relationship between short-term and long-term debt across years.
Ijfs 13 00130 g001
Table 1. Number of firms across years.
Table 1. Number of firms across years.
YearNumber of Firms
199034
199159
199266
199389
1994103
1995103
1996111
1997126
1998138
1999142
2000134
2001157
2002160
2003151
2004155
2005160
2006157
2007150
2008131
2009115
201099
201197
201293
201392
2014103
2015118
2016125
2017132
2018135
2019191
2020201
2021218
2022239
Table 2. Descriptive statistics.
Table 2. Descriptive statistics.
NMeanStd. Dev.p25Medianp75p99
Outcome variables
Profitability_1 (ROA_1)4284−0.06230.3105−0.24210.03610.15340.4032
Profitability_2 (ROA 2)4284−0.14670.3466−0.3055−0.04010.07500.3357
Main explanatory variables
Total debt42840.28900.32700.07740.20600.39071.4417
Short-term debt42840.18380.30700.04350.15000.34601.3566
Long-term debt42840.10520.11180.00290.01350.04480.4629
Control variables
Firm age42849.10417.88207153241
Firm size42846.22582.15114.62865.85367.441411.7563
R&D intensity42840.21560.28180.05700.13800.30121.0789
R&D-lag 1042840.01190.04560.00210.00330.00690.1796
Cash holding42840.38390.28360.12510.32590.63240.9426
Capital intensity42840.03740.04070.01140.02570.04940.2030
Growth opportunity42842.65312.38501.15941.99163.354411.498
Panel B: Macroeconomic variables
Real GDP331.53271.71410.77121.65512.65835.1866
Interest rate332.62882.32050.182.164.687.31
Inflation332.64791.51461.64002.60743.15688.0028
Global financial crisis330.09090.29190001
This table reports the summary of descriptive statistics of the dependent variable (ROA) and the main explanatory variables: debt (short-term debt, long-term, and total debt) with other control variables. The sample contains 687 biopharmaceutical firms, making a total of 4284 firm-year observations from 1990 to 2022. All the firm-specific variables were winsorized at the 1st and 99th percentiles.
Table 3. Summary statistics.
Table 3. Summary statistics.
All Biopharmaceutical Firms
USA Biopharmaceutical Firms Europe Biopharmaceutical Firms
N Mean Std. Dev. N Mean Std. Dev.
Main dependent variables
Profitability_ 135950.07870.31806890.02360.2513
Profitability_ 2 35950.16380.35636890.05720.2744
Main explanatory variables
Total debt35950.26970.34126890.23340.2322
Short-term debt35950.16310.32056890.14520.2172
Long-term debt35950.10660.11826890.08820.0685
Control variables
Firm age35959.33667.83666897.89118.0117
Firm size35955.94511.99576897.69022.3325
R&D intensity35950.22560.29966890.16390.1492
R&D-lag 1035950.01320.04956890.00500.0066
Cash holding 35950.39610.28466890.32020.2697
Capital intensity35950.03800.04196890.03380.0336
Growth opportunity35952.70652.44596892.37442.0166
This table reports the summary of descriptive statistics between US and Europe biopharmaceutical firms. The dependent variable is profitability measured as (EBITDA/TA) and is income before depreciation and amortization divided by the book value of assets. The main explanatory variables are debt financing (short-term debt, long-term, and total debt) with other control variables. The sample contains 687 biopharmaceutical firms, making a total of 4284 firm-year observations from 1990 to 2022. All the firm-specific variables were winsorized at the 1st and 99th percentiles.
Table 4. Correlation coefficients.
Table 4. Correlation coefficients.
Variables(1)(2)(3)(4)(5)(6)(7)(8)(9)VIF
(1) Profitability (ROA)1.0000
(2) Short-term debt−0.15801.0000 1.06
(3) Long-term debt−0.24900.00301.0000 1.02
(4) Firm age0.27600.0390−0.05301.0000 1.29
(5) Firm size0.4350−0.1130−0.02300.04501.0000 1.20
(6) R&D intensity−0.4440−0.04500.0620−0.1260−0.19701.0000 1.31
(7) Cash holding−0.5260−0.16200.0210−0.3020−0.26400.45101.0000 1.57
(8) Capital intensity−0.0840−0.0580−0.06800.0250−0.15800.12300.19001.0000 1.90
(9) Growth opportunity−0.0580−0.0660−0.03500.0290−0.02800.24900.25500.16601.00001.15
This table reports the correlation coefficients among the variables employed in this study. All continuous variables are winsorized at the 1st and 99th percentiles.
Table 5. Test difference between short-term debt and long-term debt.
Table 5. Test difference between short-term debt and long-term debt.
Variable Observation Mean Standard Error Standard Deviation
Long-term debt42840.24380.00470.3069
Short-term debt42840.04520.00170.3069
Pr (T > t) = 0.0000.
Table 6. The effect of short-term debt on profitability.
Table 6. The effect of short-term debt on profitability.
USAEurope
(1)(2)(3)(4)
ROAROAROAROA
Short-term debt−0.4475 ***−0.4256 ***−0.5349 ***−0.3152
(0.131)(0.1212)(0.1332)(0.2552)
Firm age 0.0026 ***0.003 ***0.0013 *
(0.0007)(0.0008)(0.0007)
Firm size 0.0437 ***0.0468 ***0.0375 ***
(0.0026)(0.0031)(0.0042)
R&D intensity −0.2688 ***−0.2571 ***−0.4611 ***
(0.0797)(0.0788)(0.0999)
Cash holding −0.3821 ***−0.3993 ***−0.2629 ***
(0.0306)(0.0318)(0.0509)
Medium firms 0.12200.02180.0503
(0.0856)(0.0652)(0.0636)
Old firms 0.01240.062510.0153
(0.0752)(0.0395)(0.0766)
Capital intensity 0.03860.0405 *0.024
(0.025)(0.0241)(0.0731)
Growth opportunity 0.0102 ***0.0079 ***0.0271 ***
(0.0028)(0.0029)(0.0049)
Real GDP 0.022 ***0.0202 ***0.0277 ***
(0.0014)(0.0016)(0.0037)
Interest rate 0.0627 ***0.0631 ***0.0537 ***
(0.0039)(0.0043)(0.0081)
Inflation −0.0516 ***−0.053 ***−0.0403 ***
(0.0028)(0.003)(0.0062)
Global financial crisis −0.0291 ***−0.0391 ***0.0364 ***
(0.0056)(0.0065)(0.0097)
Constant0.1529 ***−0.1415 ***−0.1571 ***−0.1481 ***
(0.0074)(0.0262)(0.0302)(0.0502)
Observations428442843595689
R-Squared0.06940.49670.4830.6111
Year EffectsYesYesYesYes
Firm EffectsNoNoNoYes
Table 6 examines the effect of short-term debt on profitability. Columns 3 and 4 compare the effect of short-term debt on profitability among American and European biopharmaceutical firms. In all regression models, I control for year fixed effects and firm fixed effects. Robust standard errors clustered by firms are presented in parentheses. *, *** denote a two-tailed p-value of <0.10 and 0.01, respectively. Definitions of variables and their estimation methods are provided in Appendix A.
Table 7. The effect of long-term debt on profitability.
Table 7. The effect of long-term debt on profitability.
USAEurope
(1)(2)(3)(4)
ROAROAROAROA
Long-term debt−0.2285 ***−0.1948 ***−0.2078 ***−0.0276
(0.0267)(0.0227)(0.0261)(0.0518)
Firm age 0.0029 ***0.0033 ***0.0012 *
(0.0008)(0.0008)(0.0007)
Medium firms 0.01200.01170.0203
(0.0156)(0.0549)(0.0836)
Old firms 0.03040.06210.0053
(0.0552)(0.0695)(0.0765)
Firm size 0.0465 ***0.0511 ***0.0369 ***
(0.0025)(0.0029)(0.0038)
R&D intensity −0.2572 ***−0.245 ***−0.468 ***
(0.0757)(0.0744)(0.1014)
Cash holding −0.3447 ***−0.3549 ***−0.2535 ***
(0.0291)(0.0303)(0.0526)
Capital intensity 0.03260.03540.008
(0.0247)(0.0231)(0.0835)
Growth opportunity 0.0094 ***0.0072 ***0.0273 ***
(0.0024)(0.0025)(0.005)
Real GDP 0.0174 ***0.0164 ***0.0234 ***
(0.0015)(0.0016)(0.0021)
Interest rate 0.0527 ***0.0548 ***0.0451 ***
(0.004)(0.0044)(0.0062)
Inflation −0.0452 ***−0.048 ***−0.0337 ***
(0.0028)(0.003)(0.0041)
Global financial crisis −0.0345 ***−0.0517 ***0.0463 ***
(0.0049)(0.0055)(0.0081)
Constant0.1608 ***−0.1587 ***−0.1785 ***−0.1594 ***
(0.0039)(0.0267)(0.0288)(0.0444)
Observations428442843595689
R-squared0.09290.49830.48780.6049
Year EffectsYesYesYesYes
Firm EffectsNoNoNoNo
This table reports the results from the regression of the effect of long-term debt on profitability. The dependent variable is profitability measured as (EBITDA/TA) and is income before depreciation and amortization divided by the book value of assets. The main explanatory variable is long-term with other control variables. Models (3) and (4) are for the sample of firms in the USA and Europe. All other variables are defined in Appendix A. The sample period is from 1990 to 2020. I control for year fixed effects and firm fixed effects. Standard errors are clustered by firm, and standard errors are reported in parentheses. The * and *** denote statistical significance at 10% and 1%, respectively.
Table 8. The effects of total debt on profitability.
Table 8. The effects of total debt on profitability.
USAEurope
(1)(2)(3)(4)
ROAROAROAROA
Total debt−0.2534 ***−0.2345 ***−0.2484 ***−0.0552
(0.0306)(0.0285)(0.0315)(0.0468)
Firm age 0.003 ***0.0034 ***0.0012 *
(0.0007)(0.0008)(0.0007)
Firm size 0.0438 ***0.048 ***0.0362 ***
(0.0022)(0.0026)(0.0036)
Medium firms 0.02440.02120.0063
(0.0256)(0.0249)(0.0856)
Old firms 0.02040.03210.0013
(0.0252)(0.0295)(0.0665)
R&D intensity −0.2517 ***−0.2396 ***−0.4682 ***
(0.0736)(0.0724)(0.1002)
Cash holding −0.3657 ***−0.3764 ***−0.2629 ***
(0.0277)(0.0291)(0.048)
Capital intensity 0.02250.02290.0073
(0.0246)(0.0237)(0.0846)
Growth opportunity 0.0091 ***0.0071 ***0.0267 ***
(0.0023)(0.0024)(0.005)
Real GDP 0.0162 ***0.0149 ***0.0233 ***
(0.0013)(0.0015)(0.0015)
Interest rate 0.049 ***0.0503 ***0.0442 ***
(0.0036)(0.0039)(0.0048)
Inflation −0.0423 ***−0.0443***−0.0334 ***
(0.0025)(0.0028)(0.0034)
Global financial crisis −0.0334 ***−0.0500 ***0.0465 ***
(0.0048)(0.0052)(0.0075)
Constant0.1788 ***−0.1175 ***−0.1344 ***−0.1409 ***
(0.0062)(0.0264)(0.0292)(0.0411)
Observations428442843595689
R-Squared0.11280.52050.51310.6065
Year EffectsYesYesYesYes
Firm EffectsNoNoNoNo
This table reports the results from the regression of the effect of long-term debt on profitability. The dependent variable is profitability measured as (EBITDA/TA) and is income before depreciation and amortization divided by the book value of assets. The main explanatory variable is total debt with other control variables. Models (3) and (4) are for the sample of firms in the USA and Europe. All other variables are defined in Appendix A. The sample period is from 1990 to 2020. I control for year fixed effects and firm fixed effects. Standard errors are clustered by firm, and standard errors are reported in parentheses. The * and *** denote statistical significance at 10% and 1%, respectively.
Table 9. The effect of short-term debt on profitability through a 10-year lag of R&D, financial distress, and total productivity.
Table 9. The effect of short-term debt on profitability through a 10-year lag of R&D, financial distress, and total productivity.
(1)(2)(3)
ROAROAROA
Short-term debt−0.5385 ***0.04820.4542 **
(0.1233)(0.057)(0.1873)
R & D t 10 −0.1016 **
(0.0453)
Short-term debt × R & D t 10 1.4842 **
(0.6015)
Financial distress −0.1819 ***
(0.0141)
Short-term debt × financial distress −0.5454 ***
(0.1513)
Firm age0.0026 ***0.0025 ***−0.0007 ***
(0.0007)(0.0006)(0.0002)
Firm size0.0438 ***0.0313 ***0.0193 ***
(0.0026)(0.002)(0.0012)
R&D−0.2688 ***−0.221 ***0.0011
(0.0797)(0.0641)(0.0283)
Cash holding−0.3824 ***−0.3398 ***−0.0796 ***
(0.0306)(0.0248)(0.0165)
Capital intensity0.03860.0116−0.0344 **
(0.0251)(0.0191)(0.0175)
Growth opportunity0.0102 ***−0.00160.014 ***
(0.0028)(0.0021)(0.0017)
Real GDP0.0223 ***0.0106 ***0.009 ***
(0.0014)(0.0011)(0.0005)
Interest rate0.0634 ***0.0313 ***0.0245 ***
(0.0039)(0.0031)(0.0011)
Inflation−0.052 ***−0.0261 ***−0.0148 ***
(0.0027)(0.0022)(0.0009)
Global financial crisis −0.0297 ***0.0076 **0.0358 ***
(0.0055)(0.0031)(0.0028)
Constant−0.141 ***−0.03220.3004 ***
(0.0261)(0.0215)(0.0216)
Observations428442842555
R-Squared0.49720.56930.4693
Year EffectsYesYesYes
Firm EffectsYesYesYes
This table reports the results from the regression of the effect of long-term debt on profitability. The dependent variable is profitability measured as (EBITDA/TA) and is income before depreciation and amortization divided by the book value of assets. The main explanatory variable is short-term debt with other control variables. The moderating variables are the 10-year lag of R&D and financial distress. All other variables are defined in Appendix A. The sample period is from 1990 to 2020. I control for year fixed effects and firm fixed effects. Standard errors are clustered by firm, and standard errors are reported in parentheses. The ** and *** denote statistical significance at 5%, and 1%, respectively.
Table 10. The effect of long-term debt on profitability through a 10-year lag of R&D, financial distress, and total productivity.
Table 10. The effect of long-term debt on profitability through a 10-year lag of R&D, financial distress, and total productivity.
(1)(2)(3)
ROAROAROA
Long-term debt−0.1936 ***−0.00270.0552
(0.0239)(0.050)(0.1178)
R & D t 10 0.0746
(0.1017)
Long-term debt × R & D t 10 0.1695
(0.2827)
Financial distress −0.1667 ***
(0.0172)
Long-term debt × financial distress −0.1117 **
(0.0561)
Firm age0.0029 ***0.0026 ***−0.0008 ***
(0.0008)(0.0007)(0.0003)
Firm size0.0464 ***0.0349 ***0.0193 ***
(0.0026)(0.0022)(0.0012)
R&D−0.2571 ***−0.2201 ***0.002
(0.0757)(0.0636)(0.0264)
Cash holding−0.3444 ***−0.313 ***−0.0816 ***
(0.029)(0.0256)(0.0158)
Capital intensity0.03310.0100−0.0355 **
(0.0247)(0.0203)(0.0177)
Growth opportunity0.0093 ***−0.00090.0138 ***
(0.0024)(0.002)(0.0018)
Real GDP0.0172 ***0.0105 ***0.008 ***
(0.0015)(0.0012)(0.0006)
Interest rate0.0521 ***0.0332 ***0.0223 ***
(0.004)(0.0035)(0.0013)
Inflation−0.0448 ***−0.0279 ***−0.013 ***
(0.0028)(0.0025)(0.0011)
Global financial crisis−0.0339***0.00280.0353 ***
(0.005)(0.0035)(0.0031)
Constant−0.1593 ***−0.0657 ***0.3091 ***
(0.0264)(0.0233)(0.0342)
Observations428442842555
R-Squared0.49840.55210.4692
Year EffectsYesYesYes
Firm EffectsNoNoNo
This table reports the results from the regression of the effect of long-term debt on profitability. The dependent variable is profitability measured as (EBITDA/TA) and is income before depreciation and amortization divided by the book value of assets. The main explanatory variable is long-term debt with other control variables. The moderating variables are the 10-year lag of R&D and financial distress. All other variables are defined in Appendix A. The sample period is from 1990 to 2020. I control for year fixed effects and firm fixed effects. Standard errors are clustered by firm, and standard errors are reported in parentheses. The ** and *** denote statistical significance at 5%, and 1%, respectively.
Table 11. The effects of short-term and long-term debt on profitability.
Table 11. The effects of short-term and long-term debt on profitability.
Short-Term DebtLong-Term Debt
(1)(2)(3)(4)
Pre-COVID-19Post COVID-19Pre-COVID-19Post COVID-19
Short-term debt−0.3934 ***−0.6195 ***
(0.0816)(0.3406)
Long-term debt −0.1937 ***−0.183 ***
(0.0251)(0.0398)
Firm age0.0033 ***0.00190.0037 ***0.0006 ***
(0.0008)(0.0013)(0.0009)(0.0001)
Firm size0.0433 ***0.0535 ***0.0449 ***0.0655 ***
(0.0027)(0.0016)(0.0025)(0.0107)
R&D intensity−0.2577 ***−0.5425 **−0.245 ***−0.5937 ***
(0.0793)(0.2109)(0.0747)(0.1662)
Cash holding−0.3838 ***−0.2198 ***−0.3538 ***−0.1714 ***
(0.0301)(0.0847)(0.0293)(0.0047)
Capital intensity0.03860.127 ***0.03380.0228
(0.0265)(0.0297)(0.0258)(0.0374)
Growth opportunity0.0096 ***0.0134 **0.0087 ***0.0119 ***
(0.003)(0.0068)(0.0025)(0.0039)
Real GDP−0.0051 ***−0.0256 ***−0.0058 ***−0.0283 ***
(0.0016)(0.0008)(0.0017)(0.0098)
Interest rate0.0519 ***0.0544 *0.0458 **0.0619 *
(0.0021)(0.0032)(0.002)(0.0041)
Inflation−0.0288 ***−0.0449 ***−0.0301 ***−0.0491 ***
(0.0016)(0.0004)(0.0015)(0.0147)
Global financial crisis 0.0152 *0.0415 ***−0.00590.0346 ***
(0.009)(0.0004)(0.0096)(0.0024)
Constant−0.222 ***−0.0571 ***−0.212 ***−0.0467 ***
(0.027)(0.0011)(0.0316)(0.0031)
Observations38274573827457
R-Squared0.48810.58820.50780.4249
Year EffectsYesYesYesYes
Firm EffectsNoNoNoNo
The dependent variable is profitability measured as (EBITDA/TA) and is income before depreciation and amortization divided by the book value of assets. The main explanatory variables are short-term debt and long-term debt with other control variables. All other variables are defined in Appendix A. The sample period is from 1990 to 2020. I control for year fixed effects and firm fixed effects. Standard errors are clustered by firm, and standard errors are reported in parentheses. The *, **, and *** denote statistical significance at 10%, 5%, and 1%, respectively.1% respectively.
Table 12. The effect of debt financing on an alternative measure of profitability.
Table 12. The effect of debt financing on an alternative measure of profitability.
(1)(2)(3)
VariablesShort-TermLong-TermTotal Debt
R O A t 1 0.0773 ***0.0668 ***0.0432 ***
(0.0003)(0.0003)(0.0001)
R O A t 2 −0.1098 ***−0.1290 ***−0.1393 ***
(0.0003)(0.0002)(0.0001)
Short-term debt−0.3682 ***
(0.0009)
Long-term debt −0.1683 ***
(0.0001)
Total debt −0.2388 ***
(0.0001)
Firm age0.0127 ***0.0170 ***0.0151 ***
(0.0004)(0.0004)(0.0004)
Firm size0.1444 ***0.1465 ***0.1416 ***
(0.0003)(0.0002)(0.0001)
R&D intensity−0.1821 ***−0.1753 ***−0.1758 ***
(0.0002)(0.0002)(0.0002)
Cash holding0.0740 ***0.0910 ***0.0653 ***
(0.0005)(0.0003)(0.0002)
Capital intensity−0.0031 ***0.0118 ***0.0080 ***
(0.0005)(0.0002)(0.0001)
Growth opportunity0.0035 ***0.0039 ***0.0032 ***
(0.0000)(0.0000)(0.0000)
Real GDP0.0023 ***0.0015 ***0.0010 ***
(0.0000)(0.0000)(0.0000)
Interest rate0.0038 ***0.0027 ***0.0033 ***
(0.0001)(0.0001)(0.0000)
Inflation−0.0044 ***−0.0025 ***−0.0025 ***
(0.0000)(0.0001)(0.0000)
Global financial crisis−0.0004 ***−0.0018 ***−0.0009 ***
(0.0001)(0.0001)(0.0001)
Constant−1.4391 ***−1.5679 ***−1.4413 ***
(0.0108)(0.0115)(0.0113)
Observations278027802780
Number of firms445445445
Observation278027802780
AR (1)−4.497−4.488−4.484
AR (2)1.3531.0360.898
Sargan291291.2290.6
This table shows the results of two-step System GMM (SGMM) regressions of profitability from 1990 to 2020. The dependent variable is the ROA, measured as the ratio of net income divided by total assets. The proxy for corporate debt is total debt. The Sargan statistic is a Sargan–Hansen test of overidentifying restrictions. AR (2) is the test for the null hypothesis of no residual serial correlation. Instrument: Two lags of the ROA, and the rest of the explanatory variables are exogenous. Significant levels are indicated by *** p < 0.01.
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Nkansah, E. Effects of Debt Financing Decisions on Profitability: A Comparison of USA and Europe Biopharmaceutical Industry. Int. J. Financial Stud. 2025, 13, 130. https://doi.org/10.3390/ijfs13030130

AMA Style

Nkansah E. Effects of Debt Financing Decisions on Profitability: A Comparison of USA and Europe Biopharmaceutical Industry. International Journal of Financial Studies. 2025; 13(3):130. https://doi.org/10.3390/ijfs13030130

Chicago/Turabian Style

Nkansah, Emmanuel. 2025. "Effects of Debt Financing Decisions on Profitability: A Comparison of USA and Europe Biopharmaceutical Industry" International Journal of Financial Studies 13, no. 3: 130. https://doi.org/10.3390/ijfs13030130

APA Style

Nkansah, E. (2025). Effects of Debt Financing Decisions on Profitability: A Comparison of USA and Europe Biopharmaceutical Industry. International Journal of Financial Studies, 13(3), 130. https://doi.org/10.3390/ijfs13030130

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