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1.IntroductionThe energy demand of mammals is primarily met by aerobic metabolism, producing 88% of ATP molecules.1 Therefore, the metabolic rate of oxygen (MRO2) is an important indicator of tissue viability and functionality. It is known that nearly all cancers after the early stage are starved for oxygen (hypoxia) due to hypermetabolism and/or limited blood supply, regardless of their cellar origins.2 In the presence of low oxygen pressure, highly malignant cancer cells survive and proliferate via glycolysis (anaerobic respiration, the Warburg effect). The presence of a large number of hypoxic regions within a tumor usually correlates with a poor prognosis.1 This metabolic phenotype has become the basis for tumor imaging by positron emission tomography (PET) using radioactively labeled oxygen. Many other pathological and physiological functions are also closely related to alterations of oxygen metabolism: examples include Alzheimer's disease,3 diabetes,4 burns,5 obstructive pulmonary disease,6 congestive heart failure,7 aging,8 sleeping,9 and physiologic challenges.10 Therefore, an accurate measurement of MRO2 has the potential to provide a powerful tool for diagnosis and therapy of cancer and other diseases as well as for metabolism-related pathophysiological studies. Compared with other oxygenation indexes of tissue, i.e., oxygen saturation (sO2) of hemoglobin and partial oxygen pressure (pO2), MRO2 is superior because it directly reflects the rate of oxygen consumption instead of the static oxygen concentration.11 If the region of interest has well-defined feeding and draining vessels, we have12 Eq. 1[TeX:] \documentclass[12pt]{minimal}\begin{document}\begin{equation} {\rm MRO}_{\rm 2} \,{\rm = }\,\varepsilon \times C_{{\rm Hb}} \times \left({{\rm sO}_{{\rm 2}in} \times A_{in} \times \bar v_{in} - {\rm sO}_{{\rm 2}out} \times A_{out} \times \bar v_{out} } \right)\!/\!W. \end{equation}\end{document}Presently, three primary imaging modalities are used to quantify MRO2.12 Among them, PET is most widely used in clinical practice. However, the need for injection or inhalation of radioactively labeled exogenous tracers results in a complex procedure with exposure to ionizing radiation, limiting its usage.14 Functional magnetic resonance imaging (fMRI) has also been intensively used for MRO2 study, especially in the brain. fMRI is limited to qualitative evaluation of only temporal changes in MRO2 and has difficulty in measuring both C Hb and sO2.15 It also must switch between different imaging protocols to measure sO2 and [TeX:] $\bar v$ .16, 17 Moreover, both PET and fMRI are expensive. Diffuse optical tomography (DOT) is also capable of measuring MRO2 and is relatively inexpensive, but it relies on an approximate theoretical model or other techniques (e.g., Doppler ultrasound and laser Doppler) to provide blood flow information.18, 19 Recently, DOT has been combined with diffuse correlation spectroscopy (DCS), which is capable of providing relative blood flow information.20 Furthermore, due to their relatively poor spatial resolutions, PET, fMRI, and DOT usually measure MRO2 averaged over a large volume.21 Here, we overcome these limitations by developing label-free metabolic photoacoustic microscopy (mPAM) that ultrasonically measures optical contrast through the photoacoustic (PA) effect. For the first time, we demonstrated that all five anatomic, chemical, and fluid-dynamic parameters for MRO2 quantification can be obtained in absolute units by mPAM alone in vivo. To validate mPAM, first we studied the MRO2 responses to hyperthermia and cryotherapy, two common therapeutic techniques. Furthermore, mPAM was used to longitudinally image melanoma and glioblastoma, demonstrating its capability of early cancer detection. 2.Materials and Methods2.1.Ethical Review of ProceduresAll experimental animal procedures were carried out in conformity with the laboratory animal protocol approved by the Animal Studies Committee at Washington University in St. Louis. 2.2.Experimental AnimalsThe ears of adult, four- to five-week-old nude mice (Hsd: Athymic Nude-FoxlNU, Harlan Co.; body weight: ∼20 g) were used for all in vivo experiments. During data acquisition, the animal was held steady with a dental/hard palate fixture and kept still by using a breathing anesthesia system (E-Z Anesthesia, Euthanex). After the experiment, the animal naturally recovered and was returned to its cage. For tumor study, after monitoring, the animal was sacrificed by an intraperitoneal administration of pentobarbital at a dosage of 120 mg/kg. 2.3.Metabolic Photoacoustic MicroscopyMetabolic photoacoustic microscopy [Fig. 1a] is based on newly developed photoacoustic microscopy, which has shown a robust capability to noninvasively image microvasculature using endogenous contrast with high spatial resolution (lateral: ∼5 μm; axial: ∼15 μm).22 Briefly speaking, a tunable dye laser (CBR-D, Sirah) pumped by a Nd:YLF laser (INNOSAB, Edgewave, 523 nm) serves as the light source. The laser pulse is reshaped by a 25-μm diameter pinhole and focused onto the surface of the mouse ear by a microscope objective lens (Olympus 4×, NA = 0.1) with a pulse energy of ∼100 nJ. Ultrasonic detection is achieved through a spherically focused ultrasonic transducer (V2012-BC, Panametrics-NDT), which is confocally placed with the objective. The detected PA signal is then amplified, digitized, and saved. A volumetric image is generated by recording the time-resolved PA signal (A-line) at each horizontal location of the two-dimensional raster scan. The motion controller provides the trigger signals for laser firing, data acquisition, and motor scanning. All of the parameters for MRO2 quantification in Eq. 1 can be simultaneously obtained by mPAM. Specifically, anatomic parameters W and A are quantified from the structural mPAM image;23 functional parameters C Hb and sO2 are measured by laser excitation at two wavelengths;23, 24 fluid-dynamic parameter [TeX:] $\bar v$ is estimated on the basis of photoacoustic Doppler bandwidth broadening of the PA signal induced by circulating red blood cells.25, 26 The structural image acquisition time is ∼25 min for a 4 mm × 4 mm region (∼1 Hz frame rate) using a single wavelength; the oxygenation image acquisition time is ∼20 min for a 1 mm × 1 mm region using two wavelengths (∼0.3 Hz frame rate); the flow speed acquisition time is ∼5 min for a 0.5 mm cross-sectional line using a single wavelength. 2.4.Hyperthermia Experimental ProtocolIn the hyperthermia study, the animal's temperature was regulated by adjusting the water temperature in the heating pad placed underneath its abdomen. The water was circulated by a water-bath system (ISOTEMP 9100, Fisher Scientific). A cotton layer between the heating pad and the animal skin buffered and homogenized the temperature change and thus protected the animal from burns. The room temperature was kept at 23 ºC. The animal's skin temperature (SKT) was monitored on the dorsal pelvis by an attached electronic thermometer (Radio Shack, Cat. No. 63-854). Before the experiment, the SKT was adjusted to 31 ºC, which was used as the baseline. The experiment was divided into three periods. The animal was first monitored at baseline temperature for ∼40 min (the resting period), then heated for ∼30 min by increasing the heading pad to 50 ºC (the heating period), and last allowed to cool to baseline for ∼100 min (the recovery period). The hemodynamic parameters were simultaneously measured on the principal artery-vein pair (AVP) using mPAM. Each measurement took ∼6 min and the whole experiment lasted for ∼3 h. 2.5.Tumor Cell CultureB16 mouse melanoma cells were obtained from the Tissue Culture and Support Center at the Washington University School of Medicine. The cells were maintained in Dulbecco's modified Eagle medium (DMEM, Invitrogen, Carlsbad, California) supplemented with 10% fetal bovine serum (FBS) and 1% P/S. U87 MG human brain glioblastoma cells (HTB-14) were obtained from American Type Cell Culture (ATCC). The cells were maintained in Eagle's Minimum Essential Medium (EMEM, Invitrogen) supplemented with 10% heat-inactivated FBS (ATCC) and 1% penicillin-streptavidin (P/S, Invitrogen). The cultures were performed at 37 °C and 5% CO2 and the cells were passaged weekly. 2.6.Inoculation of Tumor CellsIn the tumor study, 0.01 ml of suspension containing ∼0.5 million B16 melanoma cells or U87 human glioblastoma cells was inoculated into the top skin layer in the left ear of a nude mouse, using a 0.3 ml syringe with a 29-gauge needle. The injection was usually located near the second order branch of the principal AVP above the cartilage. The tumor was allowed to grow and monitored for one to three weeks. A control measurement was performed before the tumor cell injection (day zero). 2.7.Hemodynamics Measured by Metabolic Photoacoustic MicroscopyThe hemodynamic parameters were monitored using mPAM on the principal AVP, which included vessel diameter, total hemoglobin concentration, oxygen saturation, blood flow direction, and flow speed.
2.8.Melanoma Volume Estimation using Metabolic Photoacoustic MicroscopyAfter data acquisition, the PA signal amplitude acquired at each optical wavelength was extracted through the Hilbert transformation. The tumor region was then separated from the surrounding blood vessels according to the mPAM image acquired at 605 nm, where melanin has much stronger absorption than blood. A threshold of 20% of the maximum signal amplitude was set to segment the tumor. Since it was challenging to penetrate through the whole tumor due to the high absorption of melanin, a 3D envelope of the tumor region was obtained from the surface signal instead. The volume of the tumor was then calculated by integrating the corresponding voxels enclosed by the envelope. All of the image processing was conducted using the MATLAB Image Processing Toolbox (R2008a, MathWorks). 2.9.Fitting for the Profile of Blood Flow SpeedA theoretical model was used to fit the profile of the blood flow speed across the vessel,29 Here, x is the transverse location, x 0 is the vessel center, R is the vessel radius, v max is the flow speed at the vessel center, and n is the power index that characterizes the flow profile (e.g., n = 2 for laminar flow). While x 0 and R can be directly measured from the mPAM images of the vessel structure, v max and n are the unknown parameters to fit for.2.J.Statistical AnalysisQuantitative data was expressed as mean ± s.e.m. The statistical test is a paired Student's t-test (two-tailed with unequal variance), compared with the baseline levels (hyperthermia and cryotherapy studies) or day zero (tumor studies). We considered a p-value less than 0.05 to be statistically significant. 3.Results3.1.Metabolic Rate of Oxygen Quantification under NormothermiaThe nude mouse ear is a good model for validating mPAM because of its similarity to human skin and lack of motion artifacts.30, 31, 32 Each artery-vein pair (AVP) feeds a well-defined region while one pair at the base of the ear feeds the entire ear (Fig. 2).33, 34 Consequently, the MRO2 based on each AVP approximates the MRO2 of its supplied region. As an example, we measured the MRO2 of a mouse ear under normothermia. The animal's temperature was regulated with a heating pad placed under its abdomen (skin temperature: 31 ºC) and a volumetric image was acquired using mPAM at 584 nm by scanning a 10 mm × 8 mm area containing the principal AVP [Fig. 1b]. Because 584 nm is an isosbestic wavelength for hemoglobin, this image maps the concentration of total hemoglobin regardless of the oxygen saturation level. In addition, it measures the diameters of the principal AVP (artery: ∼65 μm; vein: ∼116 μm). Two PAM images acquired at 584 and 590 nm were then used to calculate sO2 [Fig. 1c].23 The vessels with high sO2 values (>90%) are classified as arteries, whereas the vessels with low sO2 values (60 to 80%) are veins. The blood flow velocity was measured at 584 nm using bi-directional scanning with a laser repetition rate of 3 KHz and a motor step size of 0.625 μm [Fig. 1d]. The profile of flow speed across the principal AVP is shown in Fig. 1e. The artery and the vein have a mean flow speed of 5.5 and 1.8 mm/s, respectively, and the speed profiles are both approximately parabolic.29 The weight of the mouse ear was computed by its volume in the 3D PA image, where the average specific weight was assumed to be 1.0 g/ml.35 From these measurements, the MRO2 of the mouse ear was estimated to be 0.23 ml/100 g/min, which agrees with the data previously measured in humans.2 3.2.Change in Metabolic Rate of Oxygen Induced by Systemic HyperthermiaHyperthermia has been clinically used for cancer treatment.36 To measure MRO2 during hyperthermia, the mouse's skin temperature was elevated to 42 ºC [Fig. 3a]. Hemodynamics were monitored on the principal of AVP. The vessel diameter started increasing at the beginning of the heating period [Fig. 3b] and reached a maximum by the end of the heating period. The total hemoglobin concentration of the principal AVP kept increasing after the heating started and plateaued when the temperature returned to the baseline [Fig. 3c]. This cumulative effect was due to a decrease in blood plasma volume resulting from water loss during hyperthermia.37 From the change in sO2 [Fig. 3d], we found that the oxygen extraction fraction (OEF, defined as (sO2in − sO2out)/sO2in and represents the fraction of O2 molecules that cross the capillary wall) decreased by 12% over the heating period and eventually recovered to 99% of the resting level [Fig. 3f]. The measurements of flow speed in the arteries during the heating were saturated because of the limited maximum measurable speed of the system [Fig. 3e]. From the measurements on the principal veins, we found the volumetric flow rate of blood entering the ear increased by 45%. Increased cardiac output and redistribution of blood to the skin are two major reasons for vessel dilation and faster blood flow, which help accelerate heat exchange with the environment.36, 38 Note that the vessel diameter, sO2, and blood flow speed reach the peaks approximately simultaneously. The MRO2 of the mouse ear, as computed from the hemodynamic changes, increased by 28% over the heating period [Fig. 3f], which indicated elevated oxygen metabolism during hyperthermia in response to an increased rate of enzymatic reactions.39 This finding can potentially elucidate another possible mechanism for cell death induced by hyperthermia. When normal cells encounter such an increased metabolism, increased blood flow provides more nutrients. By contrast, cancer cells could be damaged owing to inadequate blood circulation. Therefore, hyperthermia may kill cancer cells by both protein denaturation and cell starvation due to heating. 3.3.Change in Metabolic Rate of Oxygen Induced by Local CryotherapyCryotherapy has been found effective for treating cancer and other diseases by forming ice crystals inside cells.40, 41 Here, we applied liquid nitrogen to the mouse ear surface for 10 s via a 1-mm diameter cryo-probe and monitored the hemodynamics of the treated area [Figs. 4a, 4b]. An untreated neighboring area of the same ear was also monitored as a control. Right after the treatment, a global reflective vasodilatation was observed on both the treated and control areas, which was accompanied by an increase in blood flow and a decrease in OEF. While the MRO2 of the control area remained statistically unchanged, the MRO2 of the treated area decreased by 56% due to the induced cell death. Therefore, mPAM can be used to evaluate the efficacy of cryotherapy. Within one month after the treatment, while all of the parameters of the control area monotonically recovered to the baseline, the physiological progress of the treated area occurred in phases [Fig. 4c]. Within three days following the reflective vasodilatation, blood flow and OEF trended toward the baseline, but MRO2 remained at a low level due to cell necrosis. Starting from day five, inflammation was clearly observed, which was triggered by the immune system and was helpful for both dead cell clearance and new cell growth. Although the OEF continued to decrease due to the increased flow speed,11 the MRO2 of the treated area eventually returned to the baseline, reflecting improved tissue viability. One month later, the inflammation nearly ended and all of the parameters had recovered almost to the baseline. This study shows that each physiological phase after cryotherapy imparts its signature on the local MRO2. The common belief is that inflammation triggered by the immune response further helps kill tumor cells.42 However, our results show that the increased blood flow rate during inflammation may assist the survival of residual tumor cells by providing more nutrients and thus recovering the MRO2 level. 3.4.Early Cancer Detection by Measuring Tumor-induced Change in Metabolic Rate of OxygenThe third demonstration of mPAM is early cancer detection by measuring MRO2. The hemodynamics of the mouse ear were longitudinally monitored after the injection of B16 melanoma cells [Fig. 5a]. On day 7, vessel dilation appeared around the tumor site as shown in Figs. 5b and 6b. The volumetric blood flow rate increased by 1.5 fold [Figs. 5c and 6e]. These changes are important to ensure the supply of oxygen and nutrients to the rapidly growing tumor and to provide routes for tumor cell metastasis.43 The overall OEF of the tumor region decreased by 43% [Figs. 5c and 6f] due to the increased blood flow.11 The vasculature and melanoma were differentiated according to their different absorption spectra using dual-wavelength excitation at 584 and 605 nm, and thus the tumor volume could be estimated (Fig. 7). The hypermetabolism of melanoma was reflected by a 36% increase in MRO2 [Fig. 5c], which proves the early cancer detection capability of mPAM. The presence of the melanoma was confirmed by histology (Fig. 8). However, the melanoma was hyperoxic instead of hypoxic in the early stage [Fig. 6d]. On day 14, MRO2 dropped to the baseline level and continued to decrease [Fig. 6h], even though the total oxygen consumption rate steadily increased [Fig. 6g]. There are two possible reasons for the final decline in MRO2. On one hand, a tumor changes to anaerobic respiration instead of aerobic respiration when it grows too quickly to get sufficient oxygen;2 on the other hand, when the tumor grows too large, the tumor core dies due to a decrease in available nutrients (necrosis). The necrotic tumor core does not consume oxygen but increases tumor weight [Fig. 6a], which decreases the MRO2.44 Besides melanoma, we also studied U87 human glioblastoma [Fig. 9a], which is more transparent; thus, its intratumoral vasculature can be better visualized. On day seven, angiogenesis was observed within the tumor region [Fig. 9b], and the sO2 of the draining vein was found to be increased, indirectly indicating early-stage tumor hyperoxia [Fig. 9c]. The presence of the glioblastoma was confirmed by histology (Fig. 10). While the increase in blood supply for the glioblastoma was comparable with that for the melanoma, the OEF showed a decrease by 24% instead of 43% [Fig. 9d]. We observed a 100% increase in MRO2 instead of 36% for the melanoma, which indicated a stronger hypermetabolism at the early stage of glioblastoma. However, characteristic of early-stage cancer,45 such hypermetabolism did not lead to tumor hypoxia. In fact, the sO2 in the intratumoral vasculature was even higher than that of the surrounding normal tissue, directly indicating early-stage tumor hyperoxia [Fig. 9e]. The increase in sO2 actually caused the decrease in OEF in the tumor. This observation suggests that a hypoxia-based diagnosis may not apply to early-stage cancer.46 4.Conclusions and DiscussionThe observations presented here demonstrate the power of mPAM as the only noninvasive label-free imaging modality that can measure all of the parameters required for the quantification of MRO2 in absolute units. Whereas MRO2 is the ultimate measure of oxygen metabolism, OEF and sO2 can be misleading partial measures. Unlike as is commonly believed, a decrease in OEF or an increase in sO2 does not necessarily indicate a decrease in MRO2. Strikingly, we found early-stage cancer to be hyperoxic instead of hypoxic despite the hypermetabolism. mPAM can noninvasively measure anatomical, functional, and fluid-dynamic information at the resolution of small vessels, making it possible for MRO2 quantification in microenvironments. MRO2-based early cancer detection and evaluation of its treatment are highly desirable. mPAM also has various other prospective applications related to MRO2. First, its high spatial resolution is essential for micro-hemodynamic studies, such as monitoring of local hemorrhage caused by mini-strokes. Second, its high sensitivity is critical for studies concerning small metabolic changes, such as the monitoring of neuro-vascular coupling in response to physiological challenges. Third, its potentially real-time imaging through fast optical scanning or ultrasonic-array detection is important for studies involving short transition times between physiological states, e.g., monitoring of epileptic seizures. Finally, its high spatial scalability enables us to correlate microscopic and macroscopic studies (e.g., monitoring of local neuron firing and overall brain activity) based on the same contrast. Overall, mPAM has strong potential for the study of metabolism in cancer and other metabolic diseases. AcknowledgmentsThe authors thank Christopher Favazza, Kim Chulhong, Song Hu, Lidai Wang, Dakang Yao, and Arie Krumholz for helpful discussions; Li Li for experimental assistance; and Professor James Ballard for manuscript editing. This research was supported by the National Institutes of Health Grants Nos. R01 EB000712, R01 EB008085, R01 CA134539, U54 CA136398, R01 EB010049, and 5P60 DK02057933. ReferencesT. N. Seyfried and
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