84 ISSN 1120-1770 online, DOI 10.15586/ijfs.v33i1.1977 P U B L I C A T I O N S CODON Italian Journal of Food Science, 2021; 33 (1): 84–95 P U B L I C A T I O N S CODON Optimization of stir-baked technology for Flos Sophorae Immaturus tea according to quadratic regression rotation-orthogonal design method and quality evaluation Shang Fang Hong, Li Long Yun*, Song Xu Hong, Tan Jun, Wang Ji Rui, Chen Gang Chongqing Academy of Chinese Materia Medica, Chongqing, China; Chongqing Engineering Research Center for Fine Variety Breeding Techniques of Chinese Materia Medica, Chongqing, China; Chongqing Key Laboratory of Chinese Medicine Resources, Chongqing, China; Chongqing Sub-Center of National Resources, Center for Chinese Materia Medica, China Academy of Chinese Medical Sciences, Chongqing, China *Corresponding Author: Li Long Yun, Chongqing Engineering Research Center for Fine Variety Breeding Techniques of Chinese Materia Medica, Chongqing, China. Email: lilongyun8688@163.com Received: 5 November 2020; Accepted: 18 January 2021; Published: 15 February 2021 © 2021 Codon Publications OPEN ACCESS PAPER Abstract This study aimed to optimize the stir-baked technology for Flos Sophorae Immaturus tea (FSIT) and evaluate the quality of FSIT. The optimum stir-baked conditions were found to be as follows: amount, 3.9 kg; rotation speed, 400 r/min; and time required to reach the temperature of 120°C, 5 min and maintained for 3.9 min after adding 15 mL of 1% stevioside. The machine-made FSIT soup was clear and golden in color, with charred taste, no bit- terness, no peculiar smell, and improved sensory quality under the above-mentioned conditions. Heavy metal contents and microorganisms did not exceed the national standards. Keywords: Flos Sophorae Immaturus, quadratic regression rotation-orthogonal design, quality, stir-baked Introduction Flos Sophorae Immaturus (FSI), which originated from the flower buds of Sophora japonica L., is a medicinal food homology crude drug planted throughout China. China, which has rich resources, is the origin of Flos Sophorae Immaturus. It is bitter, slightly cold, nontoxic, and distributed in the large intestine and liver chan- nel. It is effective in cooling blood and stopping bleed- ing, clearing the liver, and reducing fire. Flos Sophorae Immaturus contains large amounts of flavonoids and glycosides, such as rutin, narcissoside, quercetin, isor- hamnetin, kaempferol, genistein, total polysaccharides, saponin, tannin, sterol, and vitamin A (Liu et al., 2016; Xie et al., 2014; Krishna, et al., 2012), and has good curative effect on myocardial circulation. Moreover, the drug clears body heat, detoxifies, lowers blood fat and blood pressure levels, softens the blood vessels, reduces inflammation, tones the kidney, prevents arterioscle- rosis, and has beauty-holding and antiaging properties (Chua, 2013; He et al., 2016). Flos Sophorae Immaturus has an extremely high nutritional value and contains 19 kinds of amino acids, including essential amino acids required for the human body. The protein content in Flos Sophorae Immaturus is as high as 19.03%, which is 2.2- fold that of common health food silver almond (Wang and Wang, 2009). With emphasis on healthcare, the research and development of functional foods containing Flos Sophorae Immaturus has become extensive, espe- cially the development of Flos Sophorae Immaturus tea (FSIT), which has become a focus of research by the Flos Sophorae Immaturus processing industry. The stir-baked method for Flos Sophorae Immaturus was first recorded in the Song dynasty, and the Chinese Pharmacopoeia (edition 2015) has also recorded mailto:lilongyun8@163.com Italian Journal of Food Science, 2021; 33 (1) 85 Stir-baked technology and quality evaluation of FSI tea Drug Control. As a standard solution, the lead (Pb) and cadmium (Cd) standard solutions were purchased from American Sigma Company. Acetonitrile, methanol, and acetic acid of chromatographic grade were purchased from TEDIA Company (USA). All other solvents and chemical reagents were of analytical grade or effective. Instruments and equipment Instruments and equipment included are as follows: Agilent 1263 HPLC (Agilent Company, USA), UV-2600 ultraviolet spectrophotometer (Shimadzu Corporation, Japan), Milli-Q Integral 5 pure water meter (Millipore Company, USA), BSA 124-S electronic scales (Sartorius Company, Germany), KQ-250 DB numerical control ultra- sonic cleaning instrument (Kunshan Ultrasonic Instrument Co. Ltd., China), XMTB digital display electric thermo- static water bath (Shanghai Yuejin Medical Instrument Co. Ltd., China), G2X-9240 MBE electricity heat drum wind drying oven (Shanghai Boxun Industrial Co. Ltd., China), ZDHW temperature regulating electric heating sleeve (Beijing Zhongxing Weiye Instrument Co. Ltd., China), and CY-900 drum-type medicine stir-fry machine (Kanghua Pharmaceutical Machinery Co. Ltd., China). FSIT preparation High-quality Flos Sophorae Immaturus with full gran- ules and large grain size was selected, cleaned, placed in a self-made sterilizing device (patent application number: 201920071851.3), piled up, steamed at a thickness range of 4–6 cm, and cooked for 15–20 min after boiling. Then it was taken out and dried for use. According to the stir- baked temperature, rotation speed, and time designed for the experiment, an appropriate amount of Flos Sophorae Immaturus was placed in a drum stir-baked machine for frying, and an appropriate amount of 1% stevia gly- coside was added to it for flavor mixing. At the end of frying, after cooling for 1 h with a blower, the sample was placed for two times in a double-layer vibrating screen- ing machine through 90-mesh screen. Finally, the sample was placed in the color selection machine for removing burnt paste and black Flos Sophorae Immaturus, and the finished product of FSIT was obtained. Single factor design of stir-baked process for FSIT Stir-baked amount The fixed stir-baked temperature was 120°C, and the motor synchronous speed was 400 r/min. At 120°C, the selected stir-baked amounts were 2, 3, 4, 5, and 6  kg. We analyzed water extract, total polysaccharides, total flavonoids, and rutin, narcisin, quercetin, and stir-baked Flos Sophorae Immaturus. In Chinese med- icine, stir-baked Flos Sophorae Immaturus can reduce the side effects of bitter cold, and is used in patients with spleen deficiency. The stir-baked substitute tea pre- pared from Flos Sophorae Immaturus has evident cura- tive effects on diabetes, hypertension, vascular sclerosis, constipation, various hemorrhoids, pharyngeal dryness, sore throat, red eyes and heat, and heart irritability (Li et al., 2017). At present, domestic research on FSIT is primarily focused on handmade or simple mechanism and the development of new compound FSIT (Jiang and Chen, 2008), although scientific reports on the key tech- nologies of the stir-baked process are relatively few. The evaluation method of FSIT is primarily limited to sensory evaluation, and the FSIT production cannot be evaluated through modern methods of measurement. In the present study, the shape, soup color, aroma, and taste of FSIT are used as sensory indicators. Water extract content, total polysaccharides, total flavonoids, and rutin, narcisin, quercetin, and isorhamnetin contents are used as chemical indicators. The weight distribution was determined through projection pursuit clustering (PPC) with objective assignment, and comprehensive vector distance (Ci), used as an evaluation index, was obtained by analyzing the sensory and chemical indices through the Technique for Order Preference by Similarity to Ideal Solution (TOPSIS) method. On the basis of single fac- tor, the quadratic regression rotation-orthogonal com- bination design was applied for the optimization of the process conditions for stir-baked FSIT, development of an FSIT variant with burnt flavor, and without bitterness and peculiar smell, and evaluation of sensory, physical, and chemical indices of production. This design can pro- vide reference for the development and utilization of Flos Sophorae Immaturus and quality control of FSIT. Materials and Methods Materials and reagent The Flos Sophorae Immaturus sample was collected in 2018 at the Flos Sophorae Immaturus base of Maojiawan, Changping Township, Wanzhou District, Chongqing City. The sample was identified as a dry flower bud of S. japonica L. by a researcher (Longyun Li) of Chongqing Academy of Chinese Materia Medica. Rutin reference substance (batch number: MUST−16070511, purity 99%), quercetin reference substance (batch number: MUST−16072203, purity 98%), and isorhamnetin ref- erence substance (batch number: MUST−16092001; purity of 98%) were purchased from Chengdu Mansite Biotechnology Co. Ltd. Narcissoside reference sub- stance (batch number: TAQT−LRLA; purity of 93.1%) was purchased from National Institutes for Food and 86 Italian Journal of Food Science, 2021; 33 (1) Shang F.H. et al. criteria mentioned in Table 2, and the average of the results was taken as the final sensory evaluation. Determination of physical and chemical indicators for FSIT Determination of moisture: Refer to the direct drying method in GB 5009.3-2016, ‘Determination of moisture in foods’. Determination of ash: Refer to the first method in GB 5009.4-2016, ‘Determination of ash in foods’. Determination of aflatoxin B1 content: Refer to the sec- ond method in GB/T 5009.22-2016, ‘Determination of aflatoxin B and G in foods’. Determination of lead, arsenic and cadmium content: Refer to the inductively coupled plasma-mass spectromet- ric method in GB/T 35876, Inspection of grain and oils— Determination of sodium, magnesium, kalium, calcium, chromium, manganese, iron, copper, zinc, arsenic, sele- nium, cadmium, and lead in cereals and derived products’. Determination of water extract, total polysaccharides and total flavonoids: The sample processing and detection methods were tested according to the relevant methods furnished in the 2015 edition of the Pharmacopoeia of the People’s Republic of China (National Pharmacopoeia Commission, 2015). Determination of rutin, narcisin, quercetin, and isor- hamnetin: Refer to the method introduced in a previous report (Tan et al., 2018). Determination of microbial indicators for FSIT The total number of bacterial colonies and coliforms of salmonella and Staphylococcus aureus of S. japonica were determined with GB 4789-2016. Shigella assay was performed with GB 4789-2012. isorhamnetin contents, and performed sensory eval- uation for FSIT for determining preferred stir-baked amount. Stir-baked temperature The fixed stir-baked amount was 4 kg, the motor syn- chronous speed was 400 r/min, the selected stir-baked temperatures were 80, 100, 120, and 140°C. The sample was stir baked for 4 min after the target temperature was reached. Water extract, total polysaccharides, total flavo- noids, and rutin, narcisin, quercetin, and isorhamnetin contents were analyzed, and sensory evaluation was per- formed for FSIT for determining the preferred stir-baked temperature. Stir-baked rotation speed The fixed stir-baked amount was 4 kg, and the stir-baked temperature was 120°C. The stir-baked time needed to reach the target temperature was 4 min, and the selected motor synchronous rotation speeds were 200, 300, 400, 500, and 600 r/min. We analyzed the water extract, total polysaccharides, total flavonoids, and rutin, narcisin, quercetin, and isorhamnetin contents, and performed sensory evaluation for FSIT to determine the preferred stir-baked rotation speed. Stir-baked time The fixed stir-baked amount was 4 kg, the stir-baked temperature was 120°C, and the motor synchronous rotated speed was 400 r/min. After stir-baking for 5 min and reaching 120°C, the stir-baked timings were 1, 2, 3, 4, 5, and 6 min for the test. We analyzed the water extract, total polysaccharides, total flavonoids, and rutin, nar- cisin, quercetin, and isorhamnetin contents, and per- formed sensory evaluation for FSIT to determine the preferred stir-baked time. Secondary orthogonal rotating combination design of stir-baked process for FSIT According to the results of the single factor test, four fac- tors for stir-baking that is, amount, temperature, rotation speed, and time, were designed, thereby applying the qua- dratic regression rotation-orthogonal combination design with four factors and five levels to optimize the FSIT stir- baked process (Ye and Liu, 2017), see Table 1. Deployment of flavor for FSIT According to the best process parameters of the test, different volumes of 1% stevioside were sprayed with regard to time, and stir-baking was continued for a cer- tain period. Ten professional tasters were invited to score different samples according to the sensory evaluation Table 1. Coding list of levels of various factors. Levels code Factors Amount (kg) X 1 Temperature (°C) X 2 Time (min) X 3 Rotate speed (r/min) X 4 +2 6 140 6 600 +1 5 130 5 500 0 4 120 4 400 -1 3 110 3 300 -2 2 100 2 200 Italian Journal of Food Science, 2021; 33 (1) 87 Stir-baked technology and quality evaluation of FSI tea Application of technique for order preference by similarity to ideal solution (TOPSIS) method TOPSIS, as proposed by Hwang and Yoon in 1981 (Hwang and Yoon, 1981), is a sorting method based on the proximity of finite evaluation objectives to ideal objectives. TOPSIS is an effective method that is used commonly in multi-objective decision-making analysis, whose basic idea is to explore optimal and worst solu- tions (represented by the optimal vector Di + and worst vector Di –, respectively) in the finite solutions on the basis of normalized original matrix. Then the distance of each evaluation objective to the optimal and worst solutions is calculated. Thus, the relative proximity between the evaluation objective and optimal solu- tion (represented by the Ci) as the basis of optimal or worst solution evaluation was obtained (Wang et al., 2019; Tang, 2010). The specific method is as follows: n evaluation objectives and m evaluation indices are set, and the original data could be written as matrix X = (X ij)n×m. High- (the larger the better) and low-quality indices (the smaller the better), that is, ijij n 2 iji 1 X Z X − = ∑ and ijij n 2 iji 1 X Z , (1 / X ) = = ∑ respectively, were normalized. The normalized matrix was Z = (Zij)n×m, with the optimal and worst vectors comprising maximum and minimum values in each column labeled as Z+ = (Zmax1, Zmax2 … Zmax) and Z - = (Zmin1, Zmin2 … Zmin), respectively. The dis- tances between the evaluation objective i and the opti- mal and worst solutions were 2m i max j ijj 1 D (Z Z )+ = = −∑ and m 2 i max j ijj 1 D (Z Z ) ,+ = = −∑ respectively. The relative proximity between the evaluation objective i and optimal solution is as follows: i i i iC D / (D D ). − + −= + Sensory evaluation of FSIT According to GB/T 23776-2018, ‘Methodology for sen- sory evaluation of tea’, the method of password evalua- tion was adopted for sensory evaluation and score. The review procedure is as follows: Sampling → comment on the shape → weighing 3 g → brewing 200 mL of boiling water → turn over the soup → look at the soup color → sniffing aroma → taste. The product quality consisted of four factors, namely, shape, aroma, soup color, and taste, and each factor was evaluated at three levels, that is, poor, medium, and good. The scores were presented in percentage; the scores for shape, aroma, soup color, and taste were 25%, 30%, 10%, and 35%, respectively. Ten professional tasters were invited to evaluate taste according to the scoring criteria, and the average was taken as the final sensory score. The sensory score criteria are demonstrated in Table 2. Weight determination by the projection pursuit clustering method Pursuit Clustering is a new statistical method for pro- cessing and analyzing high-dimensional data. The basic idea is to project high-dimensional data onto low-dimen- sional subspace and determine the optimal projection direction reflecting data structure or characteristics in solving the comprehensive evaluation of high-dimen- sional problems (Tang, 2010). According to the size of the projection direction, the weight coefficient of each evaluation index can be determined. In this study, the weight of the quality index of FSIT was calculated by the PPC method in DPS software. Table 2. Sensory scoring standards for FSIT. Factor Grade Index Shape (25%) Good (18–25 points) With charred taste, even and coking yellow in color, full grain, texture solid, crisp Middle (9–17 points) Light fragrance, uneven color, brownish yellow, individual grain broken Poor (0–8 points) Light yellow or brownish brown, with obvious burnt smell and severe grain breakage Soup Color (10%) Good (8–10 points) Clear and golden, no turbidity, no scattered particles Middle (4–7 points) Brownish yellow, no turbidity, no scattered particles Poor (0–3 points) Light green or tan, turbid, with scattered particles Aroma (30%) Good (21–30 points) Strong taste with charred smell Middle (11–20 points) Light fragrance, no charred smell Poor (0–10 points) With charred smell Taste (35%) Good (26–35 points) No astringency Middle (13–25 points) With astringency Poor (0–12 points) With paste taste and strong astringency 88 Italian Journal of Food Science, 2021; 33 (1) Shang F.H. et al. Index weight was introduced into the TOPSIS of DPS; the weight coefficient of the chemical indices was calcu- lated using PPC; and the quality indices of the stir-baked FSIT were evaluated comprehensively by combining with TOPSIS. The larger the value of Ci, the better the effect of experimental method. Results Single-factor test on stir-baked process of FSIT The factors influencing the stir-baked process of FSIT primarily included stir-baked amount, temperature, time, and speed. The assignment of water extract, total polysaccharides, total flavonoids, and rutin, narcis- soside, quercetin, and isorhamnetin contents, as well as the sensory score in the preparation of FSIT, were evaluated by the objective PPC method and analyzed through the TOPSIS method using DPS software. The results are demonstrated in Table 3. Water extract, total polysaccharides, total flavonoids, and rutin, nar- cissoside, quercetin, and isorhamnetin contents, as well as the sensory scores, were used as evaluation indica- tors. According to the ranking of Ci, the FSIT sample with the best quality was obtained after the stir-baked amount was 4 kg, stir-baked temperature was 120°C, stir-baked rotation speed was 400 r/min, and stir-baked time was 4 min at a temperature of 120°C or above. Therefore, the following tests selected the stir-baked amount of 4  kg, the stir-baked temperature of 120°C, the stir-baked speed of 400 r/min, and the stir-baked time of 4 min at zero level. Optimization of stir-baked process of FSIT by quadratic regression rotation-orthogonal combination design According to single-factor experiments, the quadratic regression rotation-orthogonal combination design with four factors and five levels was used to optimize the stir- baked process of FSIT. A total of 36 combinations at five levels for each factor were present, and the experimental design and results are demonstrated in Table 4. According to the test results (Table 4), the statistical anal- ysis software DPS 17.10 was used to obtain the quadratic regression model of Ci for four experimental factors, such as stir-baked amount, temperature, time, and rotation speed, as follows: Y = −19.80272 + 0.64512X1 + 0.25508X2 + 0.98855X3 + 0.00966X4 − 0.11938X 2 1 − 0.00106X 2 2 − 0.1095 2X 2 3 − 0.00001X24 + 0.00189X1X2 − 0.00309X1X3 + 0.00021X1X4 − 0.00071X2X3 − 0.00001X2X4 − 0.00004X3X4 ANOVA was performed with F1 = mean square loss/ mean square error and F2 = mean square regression/ mean square residual. As demonstrated in Table 5, FLf = F1 = 0.3916 < F0.1(10,11) = 2.25 and the P-value was higher than 0.05 (0.9245), thereby suggesting that the lack of fit was not significant, that is, the regression equation fitted all the test points well, and no other unknown factors affected the results. Fregression = F2 = 11.2178 > F0.01 (14,21) = 3.03 and P = 0 < 0. 01, thereby indicating that the regres- sion equation was extremely significant, that is, the qua- dratic regression model was suitable. Among them, the influences of stir-baked temperature (X2) and all qua- dratic terms on Ci were extremely significant at a = 0.01, stir-baked time (X3) and stir-baked speed (X4) were sig- nificant at a = 0.05, and the stir-baked volume (X1) was significant at a = 0.1. However, all interaction terms were not significant. Therefore, at the significant level of a = 0.1, the regression equation was simplified by eliminating the nonsignificant terms as follows: Y = −19.80272 + 0.64512X1 + 0.25508X2 + 0.98855X3 + 0.00966X4 − 0.11937X 2 1 − 0.00106X 2 2 − 0.1095 2X 2 3 − 0.00001X24 The P-value influenced by the main effect of each factor can reflect the importance of each factor to the test index. The smaller the P-value, the greater the influence of the factor on test result, that is, the greater will be the impor- tance (Sun et al., 2016). As demonstrated in Table 5, the primary and secondary influences of the four factors on Ci followed the following order: stir-baked temperature (X2) > stir-baked time (X3) > stir-baked rotation speed (X4) > stir-baked amount (X1). The stir-baked tempera- ture had a significant influence on Ci, followed by the stir- baked time, and the effect of stir-baked rotation speed was relatively small, but all reached a significant level (P < 0.05), and the stir-baked amount had no significant effect on experimental results (P > 0.05). The relationship between various factors and Ci is demonstrated in Figure 1. As demonstrated in Figure 1, the relationship between stir-baked amount (X1) and Ci was nearly linear, thereby indicating that the stir-baked amount had minimal influ- ence on Ci. The three other factors (i.e., X2, X3, and X4) also had the same trend with increase in temperature, time, and rotation speed. Ci established an upward trend, among which the changed trend of temperature was the most evident one, thereby indicating that temperature had the most significant influence on Ci. The frequency analysis method was used to find the good stir-baked conditions, and the frequency analysis results are demonstrated in Table 6. As demonstrated in Table 6, in the 95% Confidence Interval (CI), the average of Ci was more than 0.50. The optimized stir-baked scheme is as follows: stir-baked amount = 3.9 kg, stir-baked temperature = 121°C, stir-baked time after reaching the target temperature = 3.9 Italian Journal of Food Science, 2021; 33 (1) 89 Stir-baked technology and quality evaluation of FSI tea Ta bl e 3. R es ul ts o f si ng le -f ac to r te st . Fa ct or P ar am et er C on te nt (% ) S en so ry -s co re C i R an k W at er ex tr ac t To ta l po ly sa cc ha ri de s To ta l fla vo no id s R ut in N ar ci ss os id e Q ue rc et in Is or ha m ne tin A m ou nt (k g) 2 32 .3 0 1. 18 31 .4 1 25 .9 9 0. 79 0. 49 0. 34 56 0. 04 5 3 31 .6 3 1. 89 32 .7 0 26 .7 5 0. 88 0. 69 0. 35 70 0. 74 2 4 35 .3 9 1. 89 32 .8 9 27 .5 7 0. 93 0. 69 0. 35 83 0. 99 1 5 32 .4 7 1. 74 32 .9 7 27 .5 4 0. 91 0. 49 0. 34 79 0. 57 3 6 30 .8 5 1. 88 32 .5 3 26 .4 4 0. 81 0. 50 0. 33 72 0. 51 4 T em pe ra tu re (℃ ) 80 30 .9 8 1. 66 30 .2 4 26 .1 0 0. 86 0. 64 0. 33 49 0. 35 4 10 0 31 .6 3 1. 89 32 .7 0 26 .7 5 0. 88 0. 69 0. 35 70 0. 79 3 12 0 39 .9 2 2. 03 33 .1 2 27 .2 8 0. 88 0. 69 0. 36 75 0. 90 1 14 0 35 .0 8 2. 14 34 .4 8 26 .6 7 0. 85 0. 69 0. 34 65 0. 79 2 16 0 33 .7 2 1. 89 30 .9 2 25 .5 8 0. 81 0. 63 0. 33 32 0. 15 5 R ot at e sp ee d (r /m in ) 20 0 29 .3 1 1. 68 26 .0 8 27 .4 2 0. 81 0. 49 0. 28 60 0. 04 5 30 0 31 .6 3 1. 89 32 .7 0 26 .7 5 0. 88 0. 69 0. 35 70 0. 67 4 40 0 38 .2 1 1. 78 32 .4 4 26 .1 7 0. 87 0. 62 0. 38 78 0. 91 1 50 0 38 .7 0 1. 50 35 .0 6 26 .1 6 0. 88 0. 61 0. 35 78 0. 73 2 60 0 38 .1 5 1. 24 34 .4 4 25 .4 7 0. 85 0. 59 0. 34 79 0. 68 3 Ti m e (m in ) 1 31 .7 3 2. 12 32 .0 0 26 .0 1 0. 88 0. 58 0. 30 37 0. 30 6 2 33 .9 9 1. 63 32 .1 8 26 .5 1 0. 89 0. 59 0. 32 50 0. 31 5 3 31 .6 3 1. 89 32 .7 0 26 .7 5 0. 88 0. 69 0. 35 70 0. 72 3 4 39 .6 2 1. 90 34 .4 8 27 .4 0 0. 92 0. 63 0. 38 78 0. 84 1 5 34 .3 7 1. 94 34 .3 2 25 .6 2 0. 87 0. 60 0. 35 73 0. 75 2 6 33 .8 4 1. 66 32 .7 4 26 .2 4 0. 79 0. 47 0. 33 69 0. 55 4 N ot e: D i+ is th e op tim al v ec to r d is ta nc e; D i– is th e di st an ce o f th e w or st v ec to r; C i is th e re la tiv e pr ox im ity o f op tim al v al ue . 90 Italian Journal of Food Science, 2021; 33 (1) Shang F.H. et al. Ta bl e 4. E xp er im en ta l d es ig n an d re su lts o f qu ad ri c re gr es si on o rt ho go na l r ot at io n co m bi na tio n w ith fo ur fa ct or s an d fiv e le ve ls . Te st n um be r X 1 X 2 X 3 X 4 C on te nt d et er m in at io n (% ) S en so ry s co re C i W at er ex tr ac t To ta l po ly sa cc ha ri de s To ta l fla vo no id s R ut in N ar ci ss os id e Q ue rc et in Is or ha m ne tin 1 1 1 1 1 33 .8 0 1. 67 38 .6 8 26 .8 8 1. 03 0. 56 0. 33 82 0. 28 2 1 1 1 –1 34 .5 5 1. 34 38 .4 3 31 .1 6 1. 00 0. 53 0. 29 81 0. 20 3 1 1 –1 1 47 .0 2 1. 26 34 .8 1 29 .8 3 0. 98 0. 54 0. 32 79 0. 27 4 1 1 –1 –1 38 .2 0 1. 58 33 .3 1 28 .4 0. 96 0. 55 0. 33 75 0. 23 5 1 –1 1 1 37 .0 0 1. 31 33 .7 5 27 .6 1 0. 94 0. 47 0. 30 72 0. 16 6 1 –1 1 –1 35 .7 4 1. 45 33 .2 1 26 .7 9 0. 97 0. 47 0. 32 80 0. 19 7 1 –1 –1 1 35 .5 8 1. 73 30 .6 7 27 .3 4 0. 95 0. 5 0. 31 78 0. 24 8 1 –1 –1 –1 35 .8 5 1. 25 34 .4 2 28 .0 8 0. 96 0. 44 0. 28 77 0. 15 9 –1 1 1 1 39 .1 6 1. 42 37 .1 5 27 .3 8 0. 96 0. 43 0. 28 81 0. 21 10 –1 1 1 –1 34 .9 9 1. 81 38 .1 8 30 .5 3 1. 07 0. 42 0. 27 69 0. 30 11 –1 1 –1 1 35 .5 3 1. 43 34 .7 1 30 .7 2 1. 10 0. 44 0. 28 80 0. 23 12 –1 1 –1 –1 36 .8 3 1. 87 40 .8 6 30 .8 8 1. 10 0. 47 0. 29 81 0. 35 13 –1 –1 1 1 34 .5 2 1. 8 38 .2 4 31 .0 1 1. 08 0. 45 0. 28 76 0. 30 14 –1 –1 1 –1 33 .2 5 1. 74 37 .4 30 .5 6 1. 10 0. 48 0. 30 75 0. 30 15 –1 –1 –1 1 28 .1 0 1. 69 38 .0 4 29 .8 2 1. 12 0. 47 0. 30 70 0. 28 16 –1 –1 –1 –1 30 .3 4 1. 58 38 .4 1 31 .7 7 1. 10 0. 45 0. 29 79 0. 26 17 –2 0 0 0 28 .9 6 1. 31 39 .1 3 31 .5 4 1. 07 0. 46 0. 29 81 0. 21 18 2 0 0 0 31 .5 1 1. 97 41 .8 8 31 .8 5 1. 09 0. 43 0. 27 78 0. 35 19 0 –2 0 0 34 .2 7 1. 99 40 .4 4 30 .3 3 1. 08 0. 44 0. 28 70 0. 35 20 0 2 0 0 34 .4 0 1. 81 41 .0 1 31 .9 7 1. 09 0. 42 0. 27 71 0. 31 21 0 0 –2 0 31 .7 0 1. 67 41 .8 8 32 .0 9 1. 15 0. 40 0. 26 78 0. 31 22 0 0 2 0 34 .3 0 1. 86 40 .4 7 28 .4 9 1. 06 0. 53 0. 31 75 0. 33 23 0 0 0 –2 37 .2 2 1. 9 37 .3 3 27 .1 2 0. 83 0. 68 0. 35 73 0. 30 24 0 0 0 2 38 .8 6 1. 84 34 .8 8 26 .4 4 0. 83 0. 73 0. 37 78 0. 31 25 0 0 0 0 38 .6 2 1. 91 39 .9 4 29 .1 8 1. 28 4 0. 73 0. 37 83 0. 49 26 0 0 0 0 37 .3 8 1. 96 38 .1 7 30 .5 2 1. 18 0. 64 0. 40 88 0. 44 (c on tin ue s) Italian Journal of Food Science, 2021; 33 (1) 91 Stir-baked technology and quality evaluation of FSI tea Ta bl e 4. C on tin ue d Te st n um be r X 1 X 2 X 3 X 4 C on te nt d et er m in at io n (% ) S en so ry s co re C i W at er ex tr ac t To ta l po ly sa cc ha ri de s To ta l fla vo no id s R ut in N ar ci ss os id e Q ue rc et in Is or ha m ne tin 27 0 0 0 0 39 .9 3 1. 83 44 .6 2 30 .7 9 1. 94 0. 58 0. 37 85 0. 73 28 0 0 0 0 39 .5 6 1. 91 42 .9 35 .6 7 1. 97 0. 58 0. 37 89 0. 74 29 0 0 0 0 38 .8 0 1. 97 39 .2 1 30 .4 4 1. 97 0. 58 0. 37 80 0. 73 30 0 0 0 0 37 .2 0 1. 92 5 43 .3 8 29 .3 4 1. 97 0. 59 0. 37 85 0. 73 31 0 0 0 0 38 .5 8 2. 15 44 .8 4 31 .3 1. 96 0. 62 0. 39 81 0. 77 32 0 0 0 0 38 .6 8 1. 89 44 .1 9 33 .1 7 1. 77 0. 94 0. 49 82 0. 79 33 0 0 0 0 37 .6 2 1. 96 41 .9 8 34 .2 2 1. 74 0. 99 0. 52 83 0. 78 34 0 0 0 0 38 .3 3 1. 96 39 .9 7 30 .0 8 1. 74 0. 93 0. 47 81 0. 77 35 0 0 0 0 39 .1 3 2. 06 43 .6 9 31 .0 1 1. 85 0. 74 0. 44 80 0. 80 36 0 0 0 0 37 .8 5 2. 16 42 .0 4 30 .0 3 1. 78 0. 93 0. 49 80 0. 81 92 Italian Journal of Food Science, 2021; 33 (1) Shang F.H. et al. Table 5. ANOVA table of regression model. Sources of variation Sum of squares Degrees of freedom Average square Standard regression coefficient F-values P-values X 1 9.9885 1 9.9885 2.3281 1.7559 0.0937 X 2 156.1570 1 156.1570 9.2051 5.4658 0 X 3 23.4535 1 23.4535 3.5674 2.6906 0.0137 X 4 22.4100 1 22.4100 3.4871 2.6301 0.0156 X 1 2 22.3462 1 22.3462 –3.4822 6.6377 0 X 2 2 156.1020 1 156.1020 –9.2035 5.9017 0 X 3 2 18.8064 1 18.8064 –3.1945 6.0894 0 X 4 2 19.8862 1 19.8862 –3.2849 6.2617 0 X 1 X 2 1.3810 1 1.3810 0.8657 0.7441 0.4650 X 1 X 3 0.0075 1 0.0075 –0.0637 0.1214 0.9045 X 1 X 4 0.3599 1 0.3599 0.4419 0.8424 0.4091 X 2 X 3 0.1944 1 0.1944 –0.3248 0.2791 0.7829 X 2 X 4 0.4848 1 0.4850 –0.5129 0.4408 0.6638 X 3 X 4 0.0133 1 0.0133 –0.0851 0.1622 0.8727 Regression 14 0.1161 F 2 = 11.2178 0 Surplus 21 0.0103 Loss of quasi 10 0.0057 F 1 = 0.3916 0.9245 Error 11 0.0146 Sum 35 X1 stir-baked amount X2 stir-baked temperature X3 stir-baked time X4 stir-baked rotation speed –2 –22.5 –22 –21.5 –21 –20.5 –20C i –19.5 –19 –18.5 –18 –1.5 –0.5 Level of factor 0.5 1.5–1 0 1 2 Figure 1. Influence of various factors on comprehensive vector distance (Ci). min, and stir-baked rotation speed = 393 r/min. However, considering the practical operability of the equipment and production, the optimization scheme was appropriately modified. The modification scheme is as follows: stir-baked amount = 3.9 kg, stir-baked temperature w= 120°C, stir- baked time after reaching the target temperature = 3.9 min, and stir-baked rotation speed = 400 r/min. Study on taste blending of FSIT In Section 2.2.4, we obtained the best stir-baked process parameters, that is, the stir-baked amount was 3.9 kg, the stir-baked rotation speed was 400 r/min, and the stir- baked time after reaching 120°C was 5 min; 1% stevia gly- coside of different volumes was added, and the stir-baked Italian Journal of Food Science, 2021; 33 (1) 93 Stir-baked technology and quality evaluation of FSI tea Table 6. Value frequency distribution of stir-baked amount (X 1 ), temperature (X 2 ), time (X 3 ), and rotation speed (X 4 ). Level X 1 (kg) X 2 (°C) X 3 (min) X 4 (r/min) Number Frequency Number Frequency Number Frequency Number Frequency –2 0 0 0 0 0 0 0 0 –1 3 0.2 3 0.2 2 0.13 3 0.2 0 10 0.67 8 0.53 12 0.8 10 0.67 1 2 0.13 4 0.27 1 0.067 2 0.13 2 0 0 0 0 0 0 0 0 95% Confidence Interval (CI) –0.3569~0.2236 –0.2774~0.4107 –0.2905~0.1571 –0.3569~0.2236 Stir-baked conditions 3.63~4.22 117.22~124.11 3.71~4.16 364.31~422.36 Average 3.9 121 3.9 393 was conducted for 3.9 min. According to the results of scoring, the product obtained by adding 15 mL of 1% stevia glycoside tasted good. Therefore, the result of the taste blending scheme of FSIT is as follows: 15 mL of 1% stevia glycoside was added per 3.9 kg of Flos Sophorae Immaturus. Study on quality of FSIT The sensory evaluation of FSIT was conducted according to the requirements of sensory indices of the National Industry Standard of Substitute Tea. We observed the appearance of the obtained tea: the color was burnt yel- low, the grain was full, the texture was firm and crisp, and the smell had a strong coke flavor. Under natural light, the soup of FSIT was clear and golden in color; had no turbidity; had no scattered particles; had no astringency; and had charred taste through watching, smelling, and tasting. The physicochemical and microbial indicators of FSIT were determined according to the requirements of the Chinese Pharmacopoeia and the National Industry Standard on Physical and Chemical Indices of Substitute Tea and microbiological indicators on food microbial national standards. The results are demonstrated in Table 7; all the indicators complied with the relevant pro- visions of the industry standards, and the contents of all kinds of microorganisms did not exceed the values speci- fied in the National Standards. Discussion In this experiment, the sensory and chemical indices of the multicomponent content were used to: evaluate the stir-baked process of the new mechanism of FSIT com- prehensively; optimize the best process; avoid the lim- itation and inaccuracy caused by the evaluation of single index; make the stir-baked process of FSIT reasonable; Table 7. Physical and chemical indices of FSIT. Project Index Measured value Total flavonoids (%) >20 36.87 ± 0.38 Rutin (%) >15 29.49 ± 0.72 Moisture (%) ≤13 2.43 ± 0.25 Total ash (%) ≤12 5.23 ± 0.25 Aflatoxin B1 (µg·kg -1) ≤5 3.20 ± 0.10 Lead (mg·kg-1) ≤5 0.8 ± 0.10 Total arsenic (mg·kg-1) ≤0.5 0.13 ± 0.06 Cadmium (mg·kg-1) ≤0.5 0.26 ± 0.06 Total number of colonies (cfu·g-1) ≤30,000 17,000 Coliform (MPN·g–1) ≤30 15 Staphylococcus aureus Not detected Not detected Salmonella Not detected Not detected Shigella Not detected Not detected and perfect the quality evaluation system. For the selec- tion of the content evaluation indices, water extract was the general term of soluble substances that could be dis- solved in hot water in the tea soup and a comprehensive index that represented the overall level of flavor compo- nents in the tea soup (Liu et al., 2014). Flavonoids could not only enhance the capillary and has anti-inflamma- tory, antispasmodic, antiulcer, hypolipidemic, and other pharmacological effects but could also cool the blood to stop bleeding, clear the liver, and purge fire and heat. Flavonoids are one of the substances with evident bio- logical activity and physiological functioning in FSIT (Liu et  al., 2018). Although the total content of polysac- charides in Flos Sophorae Immaturus is not high but has anti-inflammatory and antiviral effects, maintains vascu- lar resistance, is rouge, and inhibits aldose reductase. The total content of polysaccharides is also one of the basic substances involved in life activities (Zhou and Xia 2011). The single-factor experiment selects PPC weight analysis combined with TOPSIS as a comprehensive evaluation 94 Italian Journal of Food Science, 2021; 33 (1) Shang F.H. et al. Conclusions The combined PPC-TOPSIS method with the quadratic orthogonal rotation combination design method was used to investigate the four factors, namely, stir-baked amount, temperature, time, and rotation speed, of the machine-made FSIT. The contents of seven components and sensory scores were taken as inspection indices to study the key technology of stir-baked FSIT, and the optimum stir-baked conditions are as follows: stir-baked amount: 3.9 kg, stir-baked rotation speed: 400 r/min, and time needed to reach the temperature of 120°C: 5 min and maintained for 3.9 min after adding 15 mL of 1% stevioside. The technology had high stability and simple operation, and the results established that the machine-made FSIT soup was clear and golden in color, with charred taste, no bitterness, no peculiar smell, and improved sensory quality under the above-mentioned conditions. The sensory, that is, physical and chemical indicators, and microbial indicators agreed with rele- vant national standards, and the technical standards for the production of stir-baked FSIT could be formulated accordingly. This research provides additional insight into the types of substitute teas and technical support for enterprises to develop the stir-baked technology of FSIT for industrial application, which has practical guiding significance. Acknowledgments This work was supported by the National Industry Technical System of Tradition Chinese Medicine (Grant No. CARS-21), the Forestry Key Technology R&D Project of Chongqing (Grant No. 2016-14), the Industry Technical System of Tradition Chinese Medicine of Chongqing (Grant No. 2017-[5]), the Natural Science Foundation Project of Chongqing (Grant No. cstc- 2018jcyjAX0669, cstc2020jcyj-msxmX0828), and the Fundamental Research Funds of Chongqing (Grant No. cstc2018jxjl-jbky120002). 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The PPC method in DPS software is a relatively objective weight assignment method that avoids artificial inter- ference factors of expert grading and eliminates grading steps. Therefore, single-factor experiment is more scien- tific, reasonable, and advantageous than the subjective weight assignment method. The TOPSIS method could provide effective solutions for the optimization of differ- ent evaluation indices and comprehensive evaluation of target groups (Ning et al., 2018) and simplify the statis- tical analysis of multi-index variable data. The TOPSIS method could be used as an auxiliary analysis method to compare different cooking conditions of Flos Sophorae Immaturus in improving work efficiency and accuracy. Orthogonal and uniform experiments are generally used to optimize the extraction or stir-baked process. Although these methods avoid a large number of repetitive exper- iments, they also have defects, such as poor precision and limited scope of application. 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